Category Archives: NOW

WHAT IS LIFE? … If life is ‘More,’ ‘much more’ …

Author: Gerd Doeben-Henisch

Changelog: Febr 9, 2025 – Febr 9, 2025

Email: info@uffmm.org

TRANSLATION: The following text is a translation from a German version into English. For the translation I am using the software @chatGPT4o with manual modifications.

CONTENT TREE

This text is part of the TOPIC Philosophy of Science.

CONTEXT


This is a direct continuation of the preceding texts

  1.  “WHAT IS LIFE? WHAT ROLE DO WE PLAY? IST THERE A FUTURE?”
  2.  “WHAT IS LIFE? … DEMOCRACY – CITIZENS”
  3. WHAT IS LIFE? … PHILOSOPHY OF LIFE

INTRODUCTION

In the preceding texts, the ‘framework’ has been outlined within which the following texts on the topic “What is life? …” will unfold. A special position is taken by the text on ‘philosophy,’ as it highlights the ‘perspective’ in which we find ourselves when we begin to think about ourselves and the surrounding world—and then also to ‘write’ about it. As a reminder of the philosophical perspective, here is the last section as a quote:

“Ultimately, ‘philosophy’ is a ‘total phenomenon’ that manifests itself in the interplay of many people in everyday life, is experienceable, and can only take shape here, in process form. ‘Truth,’ as the ‘hard core’ of any reality-related thinking, can therefore always be found only as a ‘part’ of a process in which the active interconnections significantly contribute to the ‘truth of a matter.’ Truth is therefore never ‘self-evident,’ never ‘simple,’ never ‘free of cost’; truth is a ‘precious substance’ that requires every effort to be ‘gained,’ and its state is a ‘fleeting’ one, as the ‘world’ within which truth can be ‘worked out’ continuously changes as a world. A major factor in this constant change is life itself: the ‘existence of life’ is only possible within an ‘ongoing process’ in which ‘energy’ can make ‘emergent images’ appear—images that are not created for ‘rest’ but for a ‘becoming,’ whose ultimate goal still appears in many ways ‘open’: Life can indeed—partially—destroy itself or—partially—empower itself. Somewhere in the midst of this, we find ourselves. The current year ‘2025’ is actually of little significance in this regard.”

WHAT IS LIFE? … If life is ‘More,’ ‘much more’ …

In the first text of this project, “What is Life,” much has already been said under the label ‘EARTH@WORK. Cradle of Humankind’—in principle, everything that can and must be said about a ‘new perspective’ on the ‘phenomenon of life’ in light of modern scientific and philosophical insights. As a reminder, here is the text:

“The existence [of planet Earth] was in fact the prerequisite for biological life as we know it today to have developed the way we have come to understand it. Only in recent years have we begun to grasp how the known ‘biological life’ (Nature 2) could have ‘evolved’ from ‘non-biological life’ (Nature 1). Upon deeper analysis, one can recognize not only the ‘commonality’ in the material used but also the ‘novel extensions’ that distinguish the ‘biological’ from the ‘non-biological.’ Instead of turning this ‘novelty’ into an opposition, as human thought has traditionally done (e.g., ‘matter’ versus ‘spirit,’ ‘matter’ versus ‘mind’), one can also understand it as a ‘manifestation’ of something ‘more fundamental,’ as an ‘emergence’ of new properties that, in turn, point to characteristics inherent in the ‘foundation of everything’—namely, in ‘energy’—which only become apparent when increasingly complex structures are formed. This novel interpretation is inspired by findings from modern physics, particularly quantum physics in conjunction with astrophysics. All of this suggests that Einstein’s classical equation (1905) e=mc² should be interpreted more broadly than has been customary so far (abbreviated: Plus(e=mc²)).”

This brief text will now be further expanded to make more visible the drama hinted at by the convergence of many new insights. Some may find these perspectives ‘threatening,’ while others may see them as the ‘long-awaited liberation’ from ‘false images’ that have so far rather ‘obscured’ our real possible future.

Different Contexts

If we see an ‘apple’ in isolation, this apple, with its shapes and colors, appears somehow ‘indeterminate’ by itself. But if we ‘experience’ that an apple can be ‘eaten,’ taste it, feel its effect on our body, then the apple becomes ‘part of a context.’ And if we also happen to ‘know’ something about its composition and its possible effects on our body, then the ‘image of experience’ expands into an ‘image of knowledge,’ forming a ‘context of experience and knowledge’ within us—one that pulls the apple out of its ‘initial indeterminacy.’ As part of such a context, the apple is ‘more’ than before.

The same applies to a ‘chair’: on its own, it has a shape, colors, and surface characteristics, but nothing more. If we experience that this chair is placed in a ‘room’ along with other ‘pieces of furniture,’ that we can ‘sit on a chair,’ that we can move it within the room, then an experienced image of a larger whole emerges—one in which the chair is a part with specific properties that distinguish it from other pieces of furniture. If we then also know that furniture appears in ‘rooms,’ which are parts of ‘houses,’ another rather complex ‘context of experience and knowledge’ forms within us—again making the individual chair ‘more’ than before.

We can apply this kind of thinking to many objects in everyday life. In fact, there is no single object that exists entirely on its own. This is particularly evident in ‘biological objects’ such as animals, plants, and insects.

Let’s take ourselves—humans—as an example. If we let our gaze wander from the spot where each of us is right now, across the entire country, the whole continent, even the entire sphere of our planet, we find that today (2025), humans are almost everywhere. In the standard form of men and women, there is hardly an environment where humans do not live. These environments can be very simple or densely packed with towering buildings, machines, and people in tight spaces. Once we broaden our perspective like this, it becomes clear that we humans are also ‘part of something’: both of the geographical environment we inhabit and of a vast biological community.

In everyday life, we usually only encounter a few others—sometimes a few hundred, in special cases even a few thousand—but through available knowledge, we can infer that we are billions. Again, it is the ‘context of experience and knowledge’ that places us in a larger framework, in which we are clearly ‘part of something greater.’ Here, too, the context represents something ‘more’ compared to ourselves as an individual person, as a single citizen, as a lone human being.

Time, Time Slices, …

If we can experience and think about the things around us—including ourselves—within the ‘format’ of ‘contexts,’ then it is only a small step to noticing the phenomenon of ‘change.’ In the place where we are right now, in the ‘now,’ in the ‘present moment,’ there is no change; everything is as it is. But as soon as the ‘current moment’ is followed by a ‘new moment,’ and then more and more new moments come ‘one after another,’ we inevitably begin to notice ‘changes’: things change, everything in this world changes; there is nothing that does not change!

In ‘individual experience,’ it may happen that, for several moments, we do not ‘perceive anything’ with our eyes, ears, sense of smell, or other senses. This is possible because our body’s sensory organs perceive the world only very roughly. However, with the methods of modern science, which can look ‘infinitely small’ and ‘infinitely large,’ we ‘know’ that, for example, our approximately 37 trillion (10¹²) body cells are highly active at every moment—exchanging ‘messages,’ ‘materials,’ repairing themselves, replacing dead cells with new ones, and so on. Thus, our own body is exposed to a veritable ‘storm of change’ at every moment without us being able to perceive it. The same applies to the realm of ‘microbes,’ the smallest living organisms that we cannot see, yet exist by the billions—not only ‘around us’ but also colonizing our skin and remaining in constant activity. Additionally, the materials that make up the buildings around us are constantly undergoing transformation. Over the years, these materials ‘age’ to the point where they can no longer fulfill their intended function; bridges, for example, can collapse—as we have unfortunately witnessed.

In general, we can only speak of ‘change’ if we can distinguish a ‘before’ and an ‘after’ and compare the many properties of a ‘moment before’ with those of a ‘moment after.’ In the realm of our ‘sensory perception,’ there is always only a ‘now’—no ‘before’ and ‘after.’ However, through the function of ‘memory’ working together with the ability to ‘store’ current events, our ‘brain’ possesses the remarkable ability to ‘quasi-store’ moments to a certain extent. Additionally, it can compare ‘various stored moments’ with a current sensory perception based on specific criteria. If there are ‘differences’ between the ‘current sensory perception’ and the previously ‘stored moments,’ our brain ‘notifies us’—we ‘notice’ the change.

This phenomenon of ‘perceived change’ forms the basis for our ‘experience of time.’ Humans have always relied on ‘external events’ to help categorize perceived changes within a broader framework (day-night cycles, seasons, various star constellations, timekeeping devices like various ‘clocks’ … supported by time records and, later, calendars). However, the ability to experience change remains fundamental to us.

Reflecting on all of this, one can formulate the concept of a ‘time slice’: If we imagine a ‘time segment’—which can be of any length (nanoseconds, seconds, hours, years, …)—and consider all locations on our planet, along with everything present in those locations, as a single ‘state,’ then repeating this process for each subsequent time segment creates a ‘sequence’ or ‘series’ of ‘time slices.’ Within this framework, every change occurring anywhere within a state manifests with its ‘effects’ in one of the following time slices. Depending on the ‘thickness of the time slice,’ these effects appear in the ‘immediately following slice’ or much later. In this model, nothing is lost. Depending on its ‘granularity,’ the model can be ‘highly precise’ or ‘very coarse.’ For instance, population statistics in a German municipality are only recorded once a year, on the last day of the year. If this data were collected weekly, the individual parameters (births, deaths, immigration, emigration, …) would vary significantly.

In the transition from one time slice to the next, every change has an impact—including everything that every individual person does. However, we must distinguish between immediate effects (e.g., a young person attending school regularly) and ‘long-term outcomes’ (e.g., a school diploma, acquired competencies, …), which do not manifest as direct, observable change events. The acquisition of experiences, knowledge, and skills affects the ‘inner structure’ of a person by building ‘various cognitive structures’ that enable the individual to ‘plan, decide, and act’ in new ways. This internal ‘structural development’ of a person is not directly observable, yet it can significantly influence the ‘quality of behavior.’

Time Slices of Life on Planet Earth

It was already mentioned that the ‘thickness of a time slice’ affects which events can be observed. This is related to the fact that we have come to know many ‘different types of change’ on planet Earth. Processes in the sky and in nature generally seem to take ‘longer,’ whereas the effects of specific mechanical actions occur rather ‘quickly,’ and changes to the Earth’s surface take thousands, many thousands, or even millions of years.

Here, the focus is on the major developmental steps of (biological) life on planet Earth. We ourselves—as Homo sapiens—are part of this development, and it may be interesting to explore whether our ‘participation in the great web of life’ reveals perspectives that we cannot practically perceive in the ‘everyday life’ of an individual, even though these perspectives might be of great significance to each of us.

The selection of ‘key events’ in the development of life on Earth naturally depends heavily on the ‘prior knowledge’ with which one approaches the task. Here, I have selected only those points that are found in nearly all major publications. The given time points, ‘from which’ these events are recognized, are inherently ‘imprecise,’ as both the ‘complexity’ of the events and the challenges of ‘temporal determination’ prevent greater accuracy even today. The following key events have been selected:

  • Molecular Evolution (from ~3.9 billion years ago)
  • Prokaryotic Cells (from ~3.5 billion years ago)
  • Great Oxygenation Event (from ~2.5 billion years ago)
  • Eukaryotic Cells (from ~1.5 billion years ago)
  • Multicellular Life (from ~600 million years ago)
  • Emergence of the Homo Genus (from ~2.5 million years ago)
  • Emergence of Homo sapiens (from ~300,000 years ago)
  • Emergence of Artificial Intelligence (from ~21st century)

I was then interested in calculating the time gaps between these events. For this calculation, only the starting points of the key events were used, as no precise date can be reliably determined for their later progression. The following table was derived:

  • Molecular Evolution to Prokaryotic Cells: 400 million years
  • Prokaryotic Cells to the Great Oxygenation Event: 1 billion years
  • Great Oxygenation Event to Eukaryotic Cells: 1 billion years
  • Eukaryotic Cells to Multicellular Life: 900 million years
  • Multicellular Life to the Emergence of the Homo Genus: 597.5 million years
  • Homo Genus to Homo sapiens: 2.2 million years
  • Homo sapiens to Artificial Intelligence: 297,900 years

Next, I converted these time intervals into ‘percentage shares of the total time’ of 3.9 billion years. This resulted in the following table:

  • Molecular Evolution to Prokaryotic Cells: 400 million years = 10.26%
  • Prokaryotic Cells to the Great Oxygenation Event: 1 billion years = 25.64%
  • Great Oxygenation Event to Eukaryotic Cells: 1 billion years = 25.64%
  • Eukaryotic Cells to Multicellular Life: 900 million years = 23.08%
  • Multicellular Life to the Emergence of the Homo Genus: 597.5 million years = 15.32%
  • Homo Genus to Homo sapiens: 2.2 million years = 0.056%
  • Homo sapiens to Artificial Intelligence: 297,900 years = 0.0076%

With these numbers, one can examine whether these data points on a timeline reveal any notable characteristics. Of course, purely mathematically, there are many options for what to look for. My initial interest was simply to determine whether there could be a mathematically defined curve that significantly correlates with these data points.

After numerous tests with different estimation functions (see explanations in the appendix), the logistic (S-curve) function emerged as the one that, by its design, best represents the dynamics of the real data regarding the development of biological systems.

For this estimation function, the data points “Molecular Evolution” and “Emergence of AI” were excluded, as they do not directly belong to the development of biological systems in the narrower sense. This resulted in the following data points as the basis for finding an estimation function:

0  Molecular Evolution to Prokaryotes          4.000000e+08 (NOT INCLUDED)
1  Prokaryotes to Great Oxygenation Event      1.000000e+09
2  Oxygenation Event to Eukaryotes             1.000000e+09
3  Eukaryotes to Multicellular Organisms       9.000000e+08
4  Multicellular Organisms to Homo             5.975000e+08
5  Homo to Homo sapiens                        2.200000e+06
6  Homo sapiens to AI                          2.979000e+05 (NOT INCLUDED)

For the selected events, the corresponding cumulative time values were:

0  0.400000
1  1.400000
2  2.400000
3  3.300000
4  3.897500
5  3.899700
6  3.899998

Based on these values, the prediction for the next “significant” event in the development of biological systems resulted in a time of 4.0468 billion years (our present is at 3.899998 billion years). This means that, under a conservative estimate, the next structural event is expected to occur in approximately 146.8 million years. However, it is also not entirely unlikely that it could happen in about 100 million years instead.

The curve reflects the “historical process” that classical biological systems have produced up to Homo sapiens using their previous means. However, with the emergence of the Homo genus—and especially with the life form Homo sapiens—completely new properties come into play. Within the subpopulation of Homo sapiens, there exists a life form that, through its cognitive dimension and new symbolic communication, can generate much faster and more complex foundations for action.

Thus, it cannot be ruled out that the next significant evolutionary event might occur well before 148 million years or even before 100 million years.

This working hypothesis is further reinforced by the fact that Homo sapiens, after approximately 300,000 years, has now developed machines that can be programmed. These machines can already provide substantial assistance in tasks that exceed the cognitive processing capacity of an individual human brain in navigating our complex world.

Although machines, as non-biological systems, lack an intrinsic developmental basis like biological systems, in the format of co-evolution, life on Earth could very likely accelerate its further development with the support of such programmable machines.

Being Human, Responsibility, and Emotions

With the recent context expansion regarding the possible role of humans in the global development process, many interesting perspectives emerge. However, none of them are particularly comfortable for us as humans. Instead, they are rather unsettling, as they reveal that our self-sufficiency with ourselves—almost comparable to a form of global narcissism—not only alienates us from ourselves, but also leads us, as a product of the planet’s entire living system, to progressively destroy that very life system in increasingly sensitive ways.

It seems that most people do not realize what they are doing, or, if they do suspect it, they push it aside, because the bigger picture appears too distant from their current individual sense of purpose.

This last point is crucial: How can responsibility for global life be understood by individual human beings, let alone be practically implemented? How are people, who currently live 60–120 years, supposed to concern themselves with a development that extends millions or even more years into the future?

The question of responsibility is further complicated by a structural characteristic of modern Homo sapiens: A fundamental trait of humans is that their cognitive dimension (knowledge, thinking, reasoning…) is almost entirely controlled by a wide range of emotions. Even in the year 2025, there are an enormous number of worldviews embedded in people’s minds that have little or nothing to do with reality, yet they seem to be emotionally cemented.

The handling of emotions appears to be a major blind spot:

  • Where is this truly being trained?
  • Where is it being comprehensively researched and integrated into everyday life?
  • Where is it accessible to everyone?

All these questions ultimately touch on our fundamental self-conception as humans. If we take this new perspective seriously, then we must rethink and deepen our understanding of what it truly means to be human within such a vast all-encompassing process.

And yes, it seems this will not be possible unless we develop ourselves physically and mentally to a much greater extent.

The current ethics, with its strict “prohibition on human transformation,” could, in light of the enormous challenges we face, lead to the exact opposite of its intended goal: Not the preservation of humanity, but rather its destruction.

It is becoming evident that “better technology” may only emerge if life itself, and in particular, we humans, undergo dramatic further development.

End of the Dualism ‘Non-Biological’ vs. ‘Biological’?

Up to this point in our considerations, we have spoken in the conventional way when discussing “life” (biological systems) and, separately, the Earth system with all its “non-biological” components.

This distinction between “biological” and “non-biological” is deeply embedded in the consciousness of at least European culture and all those cultures that have been strongly influenced by it.

Naturally, it is no coincidence that the distinction between “living matter” (biological systems) and “non-living matter” was recognized and used very early on. Ultimately, this was because “living matter” exhibited properties that could not be observed in “non-living matter.” This distinction has remained in place to this day.

Equipped with today’s knowledge, however, we can not only question this ancient dualism—we can actually overcome it.

The starting point for this conceptual bridge can be found on the biological side, in the fact that the first simple cells, the prokaryotes, are made up of molecules, which in turn consist of atoms, which in turn consist of… and so on. This hierarchy of components has no lower limit.

What is clear, however, is that a prokaryotic cell, the earliest form of life on planet Earth, is—in terms of its building material—entirely composed of the same material as all non-biological systems. This material is ultimately the universal building block from which the entire universe is made.

This is illustrated in the following image:

For non-living matter, Einstein (1905) formulated the equation e = mc², demonstrating that there is a specific equivalence between the mass m of an observable material and the theoretical concept of energy e (which is not directly observable). If a certain amount of energy is applied to a certain mass, accelerating it to a specific velocity, mass and energy become interchangeable. This means that one can derive mass from energy e, and conversely, extract energy e from mass m.

This formula has proven valid to this day.

But what does this equation mean for matter in a biological state? Biological structures do not need to be accelerated in order to exist biologically. However, in addition to the energy contained in their material components, they must continuously absorb energy to construct, maintain, and modify their specialized material structures. Additionally, biological matter has the ability to self-replicate.

Within this self-replication, a semiotic process takes place—one that later, in the symbolic communication of highly complex organisms, particularly in Homo sapiens, became the foundation of an entirely new and highly efficient communication system between biological entities.

The Semiotic Structure of Life

The semiotic structure in the context of reproduction can be (simplified) as follows:

  • One type of molecule (M1) interacts with another molecule (M2) as if the elements of M1 were control commands for M2.
  • Through this interaction, M2 triggers chemical processes, which in turn lead to the construction of new molecules (M3).
  • The elements of M1, which act like control commands, behave similarly to “signs” in semiotic theory.
  • The molecules M3, produced by M2, can be understood semiotically as the “meaning” of M1—while M2 represents the “meaning relationship” between M1 and M3.

Not only the human brain operates with such semiotic structures, but every modern computer possesses them as well. This suggests that it may represent a universal structure.

Does Biological Matter Reveal Hidden Properties of Energy?

If we accept these considerations, then biological matter appears to differ from non-biological matter in the following aspects:

  • Biological matter possesses the ability to arrange non-biological matter in such a way that functional relationships emerge between individual non-biological elements (atoms, molecules).
  • These relationships can be interpreted as semiotic structures: Non-biological elements function “in context” (!) as “signs”, as “dynamic meaning relationships”, and as “meanings” themselves.

This raises an important question:
To what extent should the “additional properties” exhibited by biological matter be understood not only as “emergent properties” but also as manifestations of fundamental properties of energy itself?

Since energy e itself cannot be directly observed, only its effects can be studied. This leaves science with a choice:

  1. It can continue to adhere to the traditional perspective derived from Einstein’s 1905 formula e = mc²—but this means accepting that the most complex properties of the universe remain unexplained.
  2. Or, science can expand its perspective to include non-living matter in the form of biological systems, thereby integrating biological processes into the study of fundamental physics.

Biological systems cannot be explained without energy. However, their threefold structure

  • Matter as “objects,”
  • Matter as a “meta-level,”
  • Matter as an “actor”

suggests that energy itself may possess far more internal properties than previously assumed.

Is this reluctance to reconsider energy’s role merely the result of a “false intellectual pride”? A refusal to admit that “in matter itself,” something confronts us that is far more than just “non-living matter”?

And yet, the observer—the knower—is exactly that: “matter in the form of biological systems” with properties that far exceed anything physics has been willing to account for so far.

And what about emotions?

  • Throughout this discussion, emotions have barely been mentioned.
  • What if energy is also responsible for this complex domain?

Maybe we all—philosophers, scientists, and beyond—need to go back to the start.
Maybe we need to learn to tell the story of life on this planet and the true meaning of being human in a completely new way.

After all, we have nothing to lose.
All our previous narratives are far from adequate.
And the potential future is, without a doubt, far more exciting, fascinating, and rich than anything that has been told so far…

APPENDIX

With the support of ChatGPT-4o, I tested a wide range of estimation functions (e.g., power function, inverted power function, exponential function, hyperbolic function, Gompertz function, logistic function, summed power function, each with different variations). As a result, the logistic (S-curve) function proved to be the one that best fit the real data values and allowed for a conservative estimate for the future, which appears reasonably plausible and could be slightly refined if necessary. However, given the many open parameters for the future, a conservative estimate seems to be the best approach: a certain direction can be recognized, but there remains room for unexpected events.

The following Python program was executed using the development environment Python 3.12.3 64-bit with Qt 5.15.13 and PyQt5 5.15.10 on Linux 6.8.0-52-generic (x86_64). (For Spyder, see: Spyder-IDE.org)

#!/usr/bin/env python3
# -*- coding: utf-8 -*-
"""
Created on Mon Feb 10 07:25:38 2025

@author: gerd (supported by chatGPT4o)
"""
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
from scipy.optimize import curve_fit

# Daten für die Tabelle
data = {
    "Phase": [
        "Molekulare Evolution zu Prokaryoten",
        "Prokaryoten zum Großen Sauerstoffereignis",
        "Sauerstoffereignis zu Eukaryoten",
        "Eukaryoten zu Vielzellern",
        "Vielzeller zu Homo",
        "Homo zu Homo sapiens",
        "Homo sapiens zu KI"
    ],
    "Dauer (Jahre)": [
        400e6,
        1e9,
        1e9,
        900e6,
        597.5e6,
        2.2e6,
        297900
    ]
}

# Gesamtzeit der Entwicklung des Lebens (ca. 3,9 Mrd. Jahre)
total_time = 3.9e9

# DataFrame erstellen
df = pd.DataFrame(data)

# Berechnung des prozentualen Anteils
df["% Anteil an Gesamtzeit"] = (df["Dauer (Jahre)"] / total_time) * 100

# Berechnung der kumulativen Zeit
df["Kumulative Zeit (Mrd. Jahre)"] = (df["Dauer (Jahre)"].cumsum()) / 1e9

# Extrahieren der relevanten kumulativen Zeitintervalle (Differenzen der biologischen Phasen)
relevant_intervals = df["Kumulative Zeit (Mrd. Jahre)"].iloc[1:6].diff().dropna().values

# Definieren der Zeitindices für die relevanten Intervalle
interval_steps = np.arange(len(relevant_intervals))



# Sicherstellen, dass x_cumulative_fit korrekt definiert ist
x_cumulative_fit = np.arange(1, 6)  # Index für biologische Phasen 1 bis 5
y_cumulative_fit = df["Kumulative Zeit (Mrd. Jahre)"].iloc[1:6].values  # Die zugehörigen Zeiten

# Logistische Funktion (Sigmoid-Funktion) definieren
def logistic_fit(x, L, x0, k):
    return L / (1 + np.exp(-k * (x - x0)))  # Standardisierte S-Kurve

# Curve Fitting für die kumulierte Zeitreihe mit der logistischen Funktion
params_logistic, _ = curve_fit(
    logistic_fit,
    x_cumulative_fit,
    y_cumulative_fit,
    p0=[max(y_cumulative_fit), np.median(x_cumulative_fit), 1],  # Startwerte
    maxfev=2000  # Mehr Iterationen für stabilere Konvergenz
)

# Prognose des nächsten kumulierten Zeitpunkts mit der logistischen Funktion
predicted_cumulative_logistic = logistic_fit(len(x_cumulative_fit) + 1, *params_logistic)

# Fit-Kurve für die Visualisierung der logistischen Anpassung
x_fit_time_logistic = np.linspace(1, len(x_cumulative_fit) + 1, 100)
y_fit_time_logistic = logistic_fit(x_fit_time_logistic, *params_logistic)

# Visualisierung der logistischen Anpassung an die kumulierte Zeitreihe
plt.figure(figsize=(10, 6))
plt.scatter(x_cumulative_fit, y_cumulative_fit, color='blue', label="Real Data Points")
plt.plot(x_fit_time_logistic, y_fit_time_logistic, 'r-', label="Logistic Fit (S-Curve)")
plt.axvline(len(x_cumulative_fit) + 1, color='r', linestyle='--', label="Next Forecast Point")
plt.scatter(len(x_cumulative_fit) + 1, predicted_cumulative_logistic, color='red', label=f"Forecast: {predicted_cumulative_logistic:.3f} Bn Years")

# Titel und Achsenbeschriftungen
plt.title("Logistic (S-Curve) Fit on Cumulative Evolutionary Time")
plt.xlabel("Evolutionary Phase Index")
plt.ylabel("Cumulative Time (Billion Years)")
plt.legend()
plt.grid(True)
plt.show()

# Neues t_next basierend auf der logistischen Anpassung
predicted_cumulative_logistic

Out[109]: 4.04682980616636 (Prognosewert)

COMMON SCIENCE as Sustainable Applied Empirical Theory, besides ENGINEERING, in a SOCIETY

eJournal: uffmm.org
ISSN 2567-6458, 19.Juni 2022 – 30.December 2022
Email: info@uffmm.org
Author: Gerd Doeben-Henisch
Email: gerd@doeben-henisch.de

CONTEXT

This text is part of the Philosophy of Science theme within the the uffmm.org blog.

This is work in progress:

  1. The whole text shows a dynamic, which induces many changes. Difficult to plan ‘in advance’.
  2. Perhaps, some time, it will look like a ‘book’, at least ‘for a moment’.
  3. I have started a ‘book project’ in parallel. This was motivated by the need to provide potential users of our new oksimo.R software with a coherent explanation of how the oksimo.R software, when used, generates an empirical theory in the format of a screenplay. The primary source of the book is in German and will be translated step by step here in the uffmm.blog.

INTRODUCTION

In a rather foundational paper about an idea, how one can generalize ‘systems engineering’ [*1] to the art of ‘theory engineering’ [1] a new conceptual framework has been outlined for a ‘sustainable applied empirical theory (SAET)’. Part of this new framework has been the idea that the classical recourse to groups of special experts (mostly ‘engineers’ in engineering) is too restrictive in the light of the new requirement of being sustainable: sustainability is primarily based on ‘diversity’ combined with the ‘ability to predict’ from this diversity probable future states which keep life alive. The aspect of diversity induces the challenge to see every citizen as a ‘natural expert’, because nobody can know in advance and from some non-existing absolut point of truth, which knowledge is really important. History shows that the ‘mainstream’ is usually to a large degree ‘biased’ [*1b].

With this assumption, that every citizen is a ‘natural expert’, science turns into a ‘general science’ where all citizens are ‘natural members’ of science. I will call this more general concept of science ‘sustainable citizen science (SCS)’ or ‘Citizen Science 2.0 (CS2)’. The important point here is that a sustainable citizen science is not necessarily an ‘arbitrary’ process. While the requirement of ‘diversity’ relates to possible contents, to possible ideas, to possible experiments, and the like, it follows from the other requirement of ‘predictability’/ of being able to make some useful ‘forecasts’, that the given knowledge has to be in a format, which allows in a transparent way the construction of some consequences, which ‘derive’ from the ‘given’ knowledge and enable some ‘new’ knowledge. This ability of forecasting has often been understood as the business of ‘logic’ providing an ‘inference concept’ given by ‘rules of deduction’ and a ‘practical pattern (on the meta level)’, which defines how these rules have to be applied to satisfy the inference concept. But, looking to real life, to everyday life or to modern engineering and economy, one can learn that ‘forecasting’ is a complex process including much more than only cognitive structures nicely fitting into some formulas. For this more realistic forecasting concept we will use here the wording ‘common logic’ and for the cognitive adventure where common logic is applied we will use the wording ‘common science’. ‘Common science’ is structurally not different from ‘usual science’, but it has a substantial wider scope and is using the whole of mankind as ‘experts’.

The following chapters/ sections try to illustrate this common science view by visiting different special views which all are only ‘parts of a whole’, a whole which we can ‘feel’ in every moment, but which we can not yet completely grasp with our theoretical concepts.

CONTENT

  1. Language (Main message: “The ordinary language is the ‘meta language’ to every special language. This can be used as a ‘hint’ to something really great: the mystery of the ‘self-creating’ power of the ordinary language which for most people is unknown although it happens every moment.”)
  2. Concrete Abstract Statements (Main message: “… you will probably detect, that nearly all words of a language are ‘abstract words’ activating ‘abstract meanings’. …If you cannot provide … ‘concrete situations’ the intended meaning of your abstract words will stay ‘unclear’: they can mean ‘nothing or all’, depending from the decoding of the hearer.”)
  3. True False Undefined (Main message: “… it reveals that ’empirical (observational) evidence’ is not necessarily an automatism: it presupposes appropriate meaning spaces embedded in sets of preferences, which are ‘observation friendly’.
  4. Beyond Now (Main message: “With the aid of … sequences revealing possible changes the NOW is turned into a ‘moment’ embedded in a ‘process’, which is becoming the more important reality. The NOW is something, but the PROCESS is more.“)
  5. Playing with the Future (Main message: “In this sense seems ‘language’ to be the master tool for every brain to mediate its dynamic meaning structures with symbolic fix points (= words, expressions) which as such do not change, but the meaning is ‘free to change’ in any direction. And this ‘built in ‘dynamics’ represents an ‘internal potential’ for uncountable many possible states, which could perhaps become ‘true’ in some ‘future state’. Thus ‘future’ can begin in these potentials, and thinking is the ‘playground’ for possible futures.(but see [18])”)
  6. Forecasting – Prediction: What? (This chapter explains the cognitive machinery behind forecasting/ predictions, how groups of human actors can elaborate shared descriptions, and how it is possible to start with sequences of singularities to built up a growing picture of the empirical world which appears as a radical infinite and indeterministic space. )
  7. !!! From here all the following chapters have to be re-written !!!
  8. THE LOGIC OF EVERYDAY THINKING. Lets try an Example (Will probably be re-written too)
  9. Boolean Logic (Explains what boolean logic is, how it enables the working of programmable machines, but that it is of nearly no help for the ‘heart’ of forecasting.)
  10. … more re-writing will probably happen …
  11. Everyday Language: German Example
  12. Everyday Language: English
  13. Natural Logic
  14. Predicate Logic
  15. True Statements
  16. Formal Logic Inference: Preserving Truth
  17. Ordinary Language Inference: Preserving and Creating Truth
  18. Hidden Ontologies: Cognitively Real and Empirically Real
  19. AN INFERENCE IS NOT AUTOMATICALLY A FORECAST
  20. EMPIRICAL THEORY
  21. Side Trip to Wikipedia
  22. SUSTAINABLE EMPIRICAL THEORY
  23. CITIZEN SCIENCE 2.0
  24. … ???

COMMENTS

wkp-en := Englisch Wikipedia

/* Often people argue against the usage of the wikipedia encyclopedia as not ‘scientific’ because the ‘content’ of an entry in this encyclopedia can ‘change’. This presupposes the ‘classical view’ of scientific texts to be ‘stable’, which presupposes further, that such a ‘stable text’ describes some ‘stable subject matter’. But this view of ‘steadiness’ as the major property of ‘true descriptions’ is in no correspondence with real scientific texts! The reality of empirical science — even as in some special disciplines like ‘physics’ — is ‘change’. Looking to Aristotle’s view of nature, to Galileo Galilei, to Newton, to Einstein and many others, you will not find a ‘single steady picture’ of nature and science, and physics is only a very simple strand of science compared to the live-sciences and many others. Thus wikipedia is a real scientific encyclopedia give you the breath of world knowledge with all its strengths and limits at once. For another, more general argument, see In Favour for Wikipedia */

[*1] Meaning operator ‘…’ : In this text (and in nearly all other texts of this author) the ‘inverted comma’ is used quite heavily. In everyday language this is not common. In some special languages (theory of formal languages or in programming languages or in meta-logic) the inverted comma is used in some special way. In this text, which is primarily a philosophical text, the inverted comma sign is used as a ‘meta-language operator’ to raise the intention of the reader to be aware, that the ‘meaning’ of the word enclosed in the inverted commas is ‘text specific’: in everyday language usage the speaker uses a word and assumes tacitly that his ‘intended meaning’ will be understood by the hearer of his utterance as ‘it is’. And the speaker will adhere to his assumption until some hearer signals, that her understanding is different. That such a difference is signaled is quite normal, because the ‘meaning’ which is associated with a language expression can be diverse, and a decision, which one of these multiple possible meanings is the ‘intended one’ in a certain context is often a bit ‘arbitrary’. Thus, it can be — but must not — a meta-language strategy, to comment to the hearer (or here: the reader), that a certain expression in a communication is ‘intended’ with a special meaning which perhaps is not the commonly assumed one. Nevertheless, because the ‘common meaning’ is no ‘clear and sharp subject’, a ‘meaning operator’ with the inverted commas has also not a very sharp meaning. But in the ‘game of language’ it is more than nothing 🙂

[*1b] That the main stream ‘is biased’ is not an accident, not a ‘strange state’, not a ‘failure’, it is the ‘normal state’ based on the deeper structure how human actors are ‘built’ and ‘genetically’ and ‘cultural’ ‘programmed’. Thus the challenge to ‘survive’ as part of the ‘whole biosphere’ is not a ‘partial task’ to solve a single problem, but to solve in some sense the problem how to ‘shape the whole biosphere’ in a way, which enables a live in the universe for the time beyond that point where the sun is turning into a ‘red giant’ whereby life will be impossible on the planet earth (some billion years ahead)[22]. A remarkable text supporting this ‘complex view of sustainability’ can be found in Clark and Harvey, summarized at the end of the text. [23]

[*2] The meaning of the expression ‘normal’ is comparable to a wicked problem. In a certain sense we act in our everyday world ‘as if there exists some standard’ for what is assumed to be ‘normal’. Look for instance to houses, buildings: to a certain degree parts of a house have a ‘standard format’ assuming ‘normal people’. The whole traffic system, most parts of our ‘daily life’ are following certain ‘standards’ making ‘planning’ possible. But there exists a certain percentage of human persons which are ‘different’ compared to these introduced standards. We say that they have a ‘handicap’ compared to this assumed ‘standard’, but this so-called ‘standard’ is neither 100% true nor is the ‘given real world’ in its properties a ‘100% subject’. We have learned that ‘properties of the real world’ are distributed in a rather ‘statistical manner’ with different probabilities of occurrences. To ‘find our way’ in these varying occurrences we try to ‘mark’ the main occurrences as ‘normal’ to enable a basic structure for expectations and planning. Thus, if in this text the expression ‘normal’ is used it refers to the ‘most common occurrences’.

[*3] Thus we have here a ‘threefold structure’ embracing ‘perception events, memory events, and expression events’. Perception events represent ‘concrete events’; memory events represent all kinds of abstract events but they all have a ‘handle’ which maps to subsets of concrete events; expression events are parts of an abstract language system, which as such is dynamically mapped onto the abstract events. The main source for our knowledge about perceptions, memory and expressions is experimental psychology enhanced by many other disciplines.

[*4] Characterizing language expressions by meaning – the fate of any grammar: the sentence ” … ‘words’ (= expressions) of a language which can activate such abstract meanings are understood as ‘abstract words’, ‘general words’, ‘category words’ or the like.” is pointing to a deep property of every ordinary language, which represents the real power of language but at the same time the great weakness too: expressions as such have no meaning. Hundreds, thousands, millions of words arranged in ‘texts’, ‘documents’ can show some statistical patterns’ and as such these patterns can give some hint which expressions occur ‘how often’ and in ‘which combinations’, but they never can give a clue to the associated meaning(s). During more than three-thousand years humans have tried to describe ordinary language in a more systematic way called ‘grammar’. Due to this radically gap between ‘expressions’ as ‘observable empirical facts’ and ‘meaning constructs’ hidden inside the brain it was all the time a difficult job to ‘classify’ expressions as representing a certain ‘type’ of expression like ‘nouns’, ‘predicates’, ‘adjectives’, ‘defining article’ and the like. Without regressing to the assumed associated meaning such a classification is not possible. On account of the fuzziness of every meaning ‘sharp definitions’ of such ‘word classes’ was never and is not yet possible. One of the last big — perhaps the biggest ever — project of a complete systematic grammar of a language was the grammar project of the ‘Akademie der Wissenschaften der DDR’ (‘Academy of Sciences of the GDR’) from 1981 with the title “Grundzüge einer Deutschen Grammatik” (“Basic features of a German grammar”). A huge team of scientists worked together using many modern methods. But in the preface you can read, that many important properties of the language are still not sufficiently well describable and explainable. See: Karl Erich Heidolph, Walter Flämig, Wolfgang Motsch et al.: Grundzüge einer deutschen Grammatik. Akademie, Berlin 1981, 1028 Seiten.

[*5] Differing opinions about a given situation manifested in uttered expressions are a very common phenomenon in everyday communication. In some sense this is ‘natural’, can happen, and it should be no substantial problem to ‘solve the riddle of being different’. But as you can experience, the ability of people to solve the occurrence of different opinions is often quite weak. Culture is suffering by this as a whole.

[1] Gerd Doeben-Henisch, 2022, From SYSTEMS Engineering to THEORYEngineering, see: https://www.uffmm.org/2022/05/26/from-systems-engineering-to-theory-engineering/(Remark: At the time of citation this post was not yet finished, because there are other posts ‘corresponding’ with that post, which are too not finished. Knowledge is a dynamic network of interwoven views …).

[1d] ‘usual science’ is the game of science without having a sustainable format like in citizen science 2.0.

[2] Science, see e.g. wkp-en: https://en.wikipedia.org/wiki/Science

Citation = “Science is a systematic enterprise that builds and organizes knowledge in the form of testable explanations and predictions about the universe.[1][2]

Citation = “In modern science, the term “theory” refers to scientific theories, a well-confirmed type of explanation of nature, made in a way consistent with the scientific method, and fulfilling the criteria required by modern science. Such theories are described in such a way that scientific tests should be able to provide empirical support for it, or empirical contradiction (“falsify“) of it. Scientific theories are the most reliable, rigorous, and comprehensive form of scientific knowledge,[1] in contrast to more common uses of the word “theory” that imply that something is unproven or speculative (which in formal terms is better characterized by the word hypothesis).[2] Scientific theories are distinguished from hypotheses, which are individual empirically testable conjectures, and from scientific laws, which are descriptive accounts of the way nature behaves under certain conditions.”

Citation = “New knowledge in science is advanced by research from scientists who are motivated by curiosity about the world and a desire to solve problems.[27][28] Contemporary scientific research is highly collaborative and is usually done by teams in academic and research institutions,[29] government agencies, and companies.[30][31] The practical impact of their work has led to the emergence of science policies that seek to influence the scientific enterprise by prioritizing the ethical and moral development of commercial productsarmamentshealth carepublic infrastructure, and environmental protection.”

[2b] History of science in wkp-en: https://en.wikipedia.org/wiki/History_of_science#Scientific_Revolution_and_birth_of_New_Science

[3] Theory, see wkp-en: https://en.wikipedia.org/wiki/Theory#:~:text=A%20theory%20is%20a%20rational,or%20no%20discipline%20at%20all.

Citation = “A theory is a rational type of abstract thinking about a phenomenon, or the results of such thinking. The process of contemplative and rational thinking is often associated with such processes as observational study or research. Theories may be scientific, belong to a non-scientific discipline, or no discipline at all. Depending on the context, a theory’s assertions might, for example, include generalized explanations of how nature works. The word has its roots in ancient Greek, but in modern use it has taken on several related meanings.”

[4] Scientific theory, see: wkp-en: https://en.wikipedia.org/wiki/Scientific_theory

Citation = “In modern science, the term “theory” refers to scientific theories, a well-confirmed type of explanation of nature, made in a way consistent with the scientific method, and fulfilling the criteria required by modern science. Such theories are described in such a way that scientific tests should be able to provide empirical support for it, or empirical contradiction (“falsify“) of it. Scientific theories are the most reliable, rigorous, and comprehensive form of scientific knowledge,[1] in contrast to more common uses of the word “theory” that imply that something is unproven or speculative (which in formal terms is better characterized by the word hypothesis).[2] Scientific theories are distinguished from hypotheses, which are individual empirically testable conjectures, and from scientific laws, which are descriptive accounts of the way nature behaves under certain conditions.”

[4b] Empiricism in wkp-en: https://en.wikipedia.org/wiki/Empiricism

[4c] Scientific method in wkp-en: https://en.wikipedia.org/wiki/Scientific_method

Citation =”The scientific method is an empirical method of acquiring knowledge that has characterized the development of science since at least the 17th century (with notable practitioners in previous centuries). It involves careful observation, applying rigorous skepticism about what is observed, given that cognitive assumptions can distort how one interprets the observation. It involves formulating hypotheses, via induction, based on such observations; experimental and measurement-based statistical testing of deductions drawn from the hypotheses; and refinement (or elimination) of the hypotheses based on the experimental findings. These are principles of the scientific method, as distinguished from a definitive series of steps applicable to all scientific enterprises.[1][2][3] [4c]

and

Citation = “The purpose of an experiment is to determine whether observations[A][a][b] agree with or conflict with the expectations deduced from a hypothesis.[6]: Book I, [6.54] pp.372, 408 [b] Experiments can take place anywhere from a garage to a remote mountaintop to CERN’s Large Hadron Collider. There are difficulties in a formulaic statement of method, however. Though the scientific method is often presented as a fixed sequence of steps, it represents rather a set of general principles.[7] Not all steps take place in every scientific inquiry (nor to the same degree), and they are not always in the same order.[8][9]

[5] Gerd Doeben-Henisch, “Is Mathematics a Fake? No! Discussing N.Bourbaki, Theory of Sets (1968) – Introduction”, 2022, https://www.uffmm.org/2022/06/06/n-bourbaki-theory-of-sets-1968-introduction/

[6] Logic, see wkp-en: https://en.wikipedia.org/wiki/Logic

[7] W. C. Kneale, The Development of Logic, Oxford University Press (1962)

[8] Set theory, in wkp-en: https://en.wikipedia.org/wiki/Set_theory

[9] N.Bourbaki, Theory of Sets , 1968, with a chapter about structures, see: https://en.wikipedia.org/wiki/%C3%89l%C3%A9ments_de_math%C3%A9matique

[10] = [5]

[11] Ludwig Josef Johann Wittgenstein ( 1889 – 1951): https://en.wikipedia.org/wiki/Ludwig_Wittgenstein

[12] Ludwig Wittgenstein, 1953: Philosophische Untersuchungen [PU], 1953: Philosophical Investigations [PI], translated by G. E. M. Anscombe /* For more details see: https://en.wikipedia.org/wiki/Philosophical_Investigations */

[13] Wikipedia EN, Speech acts: https://en.wikipedia.org/wiki/Speech_act

[14] While the world view constructed in a brain is ‘virtual’ compared to the ‘real word’ outside the brain (where the body outside the brain is also functioning as ‘real world’ in relation to the brain), does the ‘virtual world’ in the brain function for the brain mostly ‘as if it is the real world’. Only under certain conditions can the brain realize a ‘difference’ between the triggering outside real world and the ‘virtual substitute for the real world’: You want to use your bicycle ‘as usual’ and then suddenly you have to notice that it is not at that place where is ‘should be’. …

[15] Propositional Calculus, see wkp-en: https://en.wikipedia.org/wiki/Propositional_calculus#:~:text=Propositional%20calculus%20is%20a%20branch,of%20arguments%20based%20on%20them.

[16] Boolean algebra, see wkp-en: https://en.wikipedia.org/wiki/Boolean_algebra

[17] Boolean (or propositional) Logic: As one can see in the mentioned articles of the English wikipedia, the term ‘boolean logic’ is not common. The more logic-oriented authors prefer the term ‘boolean calculus’ [15] and the more math-oriented authors prefer the term ‘boolean algebra’ [16]. In the view of this author the general view is that of ‘language use’ with ‘logic inference’ as leading idea. Therefore the main topic is ‘logic’, in the case of propositional logic reduced to a simple calculus whose similarity with ‘normal language’ is widely ‘reduced’ to a play with abstract names and operators. Recommended: the historical comments in [15].

[18] Clearly, thinking alone can not necessarily induce a possible state which along the time line will become a ‘real state’. There are numerous factors ‘outside’ the individual thinking which are ‘driving forces’ to push real states to change. But thinking can in principle synchronize with other individual thinking and — in some cases — can get a ‘grip’ on real factors causing real changes.

[19] This kind of knowledge is not delivered by brain science alone but primarily from experimental (cognitive) psychology which examines observable behavior and ‘interprets’ this behavior with functional models within an empirical theory.

[20] Predicate Logic or First-Order Logic or … see: wkp-en: https://en.wikipedia.org/wiki/First-order_logic#:~:text=First%2Dorder%20logic%E2%80%94also%20known,%2C%20linguistics%2C%20and%20computer%20science.

[21] Gerd Doeben-Henisch, In Favour of Wikipedia, https://www.uffmm.org/2022/07/31/in-favour-of-wikipedia/, 31 July 2022

[22] The sun, see wkp-ed https://en.wikipedia.org/wiki/Sun (accessed 8 Aug 2022)

[23] By Clark, William C., and Alicia G. Harley – https://doi.org/10.1146/annurev-environ-012420-043621, Clark, William C., and Alicia G. Harley. 2020. “Sustainability Science: Toward a Synthesis.” Annual Review of Environment and Resources 45 (1): 331–86, CC BY-SA 4.0, https://commons.wikimedia.org/w/index.php?curid=109026069

[24] Sustainability in wkp-en: https://en.wikipedia.org/wiki/Sustainability#Dimensions_of_sustainability

[25] Sustainable Development in wkp-en: https://en.wikipedia.org/wiki/Sustainable_development

[26] Marope, P.T.M; Chakroun, B.; Holmes, K.P. (2015). Unleashing the Potential: Transforming Technical and Vocational Education and Training (PDF). UNESCO. pp. 9, 23, 25–26. ISBN978-92-3-100091-1.

[27] SDG 4 in wkp-en: https://en.wikipedia.org/wiki/Sustainable_Development_Goal_4

[28] Thomas Rid, Rise of the Machines. A Cybernetic History, W.W.Norton & Company, 2016, New York – London

[29] Doeben-Henisch, G., 2006, Reducing Negative Complexity by a Semiotic System In: Gudwin, R., & Queiroz, J., (Eds). Semiotics and Intelligent Systems Development. Hershey et al: Idea Group Publishing, 2006, pp.330-342

[30] Döben-Henisch, G.,  Reinforcing the global heartbeat: Introducing the planet earth simulator project, In M. Faßler & C. Terkowsky (Eds.), URBAN FICTIONS. Die Zukunft des Städtischen. München, Germany: Wilhelm Fink Verlag, 2006, pp.251-263

[29] The idea that individual disciplines are not good enough for the ‘whole of knowledge’ is expressed in a clear way in a video of the theoretical physicist and philosopher Carlo Rovell: Carlo Rovelli on physics and philosophy, June 1, 2022, Video from the Perimeter Institute for Theoretical Physics. Theoretical physicist, philosopher, and international bestselling author Carlo Rovelli joins Lauren and Colin for a conversation about the quest for quantum gravity, the importance of unlearning outdated ideas, and a very unique way to get out of a speeding ticket.

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[] Florence Maraninchi, Let us Not Put All Our Eggs in One Basket. Towards new research directions in computer Science, CACM Communications of the ACM, September 2022, Vol.65, No.9, pp.35-37, https://dl.acm.org/doi/10.1145/3528088

[] AYA H. KIMURA and ABBY KINCHY, “Citizen Science: Probing the Virtues and Contexts of Participatory Research”, Engaging Science, Technology, and Society 2 (2016), 331-361, DOI:10.17351/ests2016.099

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[] Tom Gruber (2008), Collective knowledge systems: Where the social web meets the semantic web. Web Semantics: Science, Services and Agents on the World Wide Web 6, 1 (2008), 4–13. DOI:https://doi.org/10.1016/j.websem.2007.11.011

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[] Philip Tetlow, Dinesh Garg, Leigh Chase, Mark Mattingley-Scott, Nicholas Bronn, Kugendran Naidoo†, Emil Reinert (2022), Towards a Semantic Information Theory (Introducing Quantum Corollas), arXiv:2201.05478v1 [cs.IT] 14 Jan 2022, 28 pages

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Comment by Gerd Doeben-Henisch:

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[] Scott Aaronson, Reform AI Alignment, Update: 22.November 2022, https://scottaaronson.blog/?p=6821

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[] Daniel S. Brown, Wonjoon Goo, Prabhat Nagarajan, Scott Niekum, (2019) Extrapolating Beyond Suboptimal Demonstrations via
Inverse Reinforcement Learning from Observations
, Proceedings of the 36 th International Conference on Machine Learning, Long Beach, California, PMLR 97, 2019. Copyright 2019 by the author(s): https://arxiv.org/pdf/1904.06387.pdf

Abstract: Extrapolating Beyond Suboptimal Demonstrations via
Inverse Reinforcement Learning from Observations
Daniel S. Brown * 1 Wonjoon Goo * 1 Prabhat Nagarajan 2 Scott Niekum 1
You can read in the abstract:
“A critical flaw of existing inverse reinforcement learning (IRL) methods is their inability to significantly outperform the demonstrator. This is because IRL typically seeks a reward function that makes the demonstrator appear near-optimal, rather than inferring the underlying intentions of the demonstrator that may have been poorly executed in practice. In this paper, we introduce
a novel reward-learning-from-observation algorithm, Trajectory-ranked Reward EXtrapolation (T-REX), that extrapolates beyond a set of (ap-
proximately) ranked demonstrations in order to infer high-quality reward functions from a set of potentially poor demonstrations. When combined
with deep reinforcement learning, T-REX outperforms state-of-the-art imitation learning and IRL methods on multiple Atari and MuJoCo bench-
mark tasks and achieves performance that is often more than twice the performance of the best demonstration. We also demonstrate that T-REX
is robust to ranking noise and can accurately extrapolate intention by simply watching a learner noisily improve at a task over time.”

[] Paul Christiano, Jan Leike, Tom B. Brown, Miljan Martic, Shane Legg, Dario Amodei, (2017), Deep reinforcement learning from human preferences, https://arxiv.org/abs/1706.03741

In the abstract you can read: “For sophisticated reinforcement learning (RL) systems to interact usefully with real-world environments, we need to communicate complex goals to these systems. In this work, we explore goals defined in terms of (non-expert) human preferences between pairs of trajectory segments. We show that this approach can effectively solve complex RL tasks without access to the reward function, including Atari games and simulated robot locomotion, while providing feedback on less than one percent of our agent’s interactions with the environment. This reduces the cost of human oversight far enough that it can be practically applied to state-of-the-art RL systems. To demonstrate the flexibility of our approach, we show that we can successfully train complex novel behaviors with about an hour of human time. These behaviors and environments are considerably more complex than any that have been previously learned from human feedback.

[] Melanie Mitchell,(2021), Abstraction and Analogy-Making in Artificial
Intelligence
, https://arxiv.org/pdf/2102.10717.pdf

In the abstract you can read: “Conceptual abstraction and analogy-making are key abilities underlying humans’ abilities to learn, reason, and robustly adapt their knowledge to new domains. Despite of a long history of research on constructing AI systems with these abilities, no current AI system is anywhere close to a capability of forming humanlike abstractions or analogies. This paper reviews the advantages and limitations of several approaches toward this goal, including symbolic methods, deep learning, and probabilistic program induction. The paper concludes with several proposals for designing
challenge tasks and evaluation measures in order to make quantifiable and generalizable progress

[] Melanie Mitchell, (2021), Why AI is Harder Than We Think, https://arxiv.org/pdf/2102.10717.pdf

In the abstract you can read: “Since its beginning in the 1950s, the field of artificial intelligence has cycled several times between periods of optimistic predictions and massive investment (“AI spring”) and periods of disappointment, loss of confidence, and reduced funding (“AI winter”). Even with today’s seemingly fast pace of AI breakthroughs, the development of long-promised technologies such as self-driving cars, housekeeping robots, and conversational companions has turned out to be much harder than many people expected. One reason for these repeating cycles is our limited understanding of the nature and complexity of intelligence itself. In this paper I describe four fallacies in common assumptions made by AI researchers, which can lead to overconfident predictions about the field. I conclude by discussing the open questions spurred by these fallacies, including the age-old challenge of imbuing machines with humanlike common sense.”

[] Stuart Russell, (2019), Human Compatible: AI and the Problem of Control, Penguin books, Allen Lane; 1. Edition (8. Oktober 2019)

In the preface you can read: “This book is about the past , present , and future of our attempt to understand and create intelligence . This matters , not because AI is rapidly becoming a pervasive aspect of the present but because it is the dominant technology of the future . The world’s great powers are waking up to this fact , and the world’s largest corporations have known it for some time . We cannot predict exactly how the technology will develop or on what timeline . Nevertheless , we must plan for the possibility that machines will far exceed the human capacity for decision making in the real world . What then ? Everything civilization has to offer is the product of our intelligence ; gaining access to considerably greater intelligence would be the biggest event in human history . The purpose of the book is to explain why it might be the last event in human history and how to make sure that it is not .”

[] David Adkins, Bilal Alsallakh, Adeel Cheema, Narine Kokhlikyan, Emily McReynolds, Pushkar Mishra, Chavez Procope, Jeremy Sawruk, Erin Wang, Polina Zvyagina, (2022), Method Cards for Prescriptive Machine-Learning Transparency, 2022 IEEE/ACM 1st International Conference on AI Engineering – Software Engineering for AI (CAIN), CAIN’22, May 16–24, 2022, Pittsburgh, PA, USA, pp. 90 – 100, Association for Computing Machinery, ACM ISBN 978-1-4503-9275-4/22/05, New York, NY, USA, https://doi.org/10.1145/3522664.3528600

In the abstract you can read: “Specialized documentation techniques have been developed to communicate key facts about machine-learning (ML) systems and the datasets and models they rely on. Techniques such as Datasheets,
AI FactSheets, and Model Cards have taken a mainly descriptive
approach, providing various details about the system components.
While the above information is essential for product developers
and external experts to assess whether the ML system meets their
requirements, other stakeholders might find it less actionable. In
particular, ML engineers need guidance on how to mitigate po-
tential shortcomings in order to fix bugs or improve the system’s
performance. We propose a documentation artifact that aims to
provide such guidance in a prescriptive way. Our proposal, called
Method Cards, aims to increase the transparency and reproducibil-
ity of ML systems by allowing stakeholders to reproduce the models,
understand the rationale behind their designs, and introduce adap-
tations in an informed way. We showcase our proposal with an
example in small object detection, and demonstrate how Method
Cards can communicate key considerations that help increase the
transparency and reproducibility of the detection model. We fur-
ther highlight avenues for improving the user experience of ML
engineers based on Method Cards.”

[] John H. Miller, (2022),  Ex Machina: Coevolving Machines and the Origins of the Social Universe, The SFI Press Scholars Series, 410 pages
Paperback ISBN: 978-1947864429 , DOI: 10.37911/9781947864429

In the announcement of the book you can read: “If we could rewind the tape of the Earth’s deep history back to the beginning and start the world anew—would social behavior arise yet again? While the study of origins is foundational to many scientific fields, such as physics and biology, it has rarely been pursued in the social sciences. Yet knowledge of something’s origins often gives us new insights into the present. In Ex Machina, John H. Miller introduces a methodology for exploring systems of adaptive, interacting, choice-making agents, and uses this approach to identify conditions sufficient for the emergence of social behavior. Miller combines ideas from biology, computation, game theory, and the social sciences to evolve a set of interacting automata from asocial to social behavior. Readers will learn how systems of simple adaptive agents—seemingly locked into an asocial morass—can be rapidly transformed into a bountiful social world driven only by a series of small evolutionary changes. Such unexpected revolutions by evolution may provide an important clue to the emergence of social life.”

[] Stefani A. Crabtree, Global Environmental Change, https://doi.org/10.1016/j.gloenvcha.2022.102597

In the abstract you can read: “Analyzing the spatial and temporal properties of information flow with a multi-century perspective could illuminate the sustainability of human resource-use strategies. This paper uses historical and archaeological datasets to assess how spatial, temporal, cognitive, and cultural limitations impact the generation and flow of information about ecosystems within past societies, and thus lead to tradeoffs in sustainable practices. While it is well understood that conflicting priorities can inhibit successful outcomes, case studies from Eastern Polynesia, the North Atlantic, and the American Southwest suggest that imperfect information can also be a major impediment
to sustainability. We formally develop a conceptual model of Environmental Information Flow and Perception (EnIFPe) to examine the scale of information flow to a society and the quality of the information needed to promote sustainable coupled natural-human systems. In our case studies, we assess key aspects of information flow by focusing on food web relationships and nutrient flows in socio-ecological systems, as well as the life cycles, population dynamics, and seasonal rhythms of organisms, the patterns and timing of species’ migration, and the trajectories of human-induced environmental change. We argue that the spatial and temporal dimensions of human environments shape society’s ability to wield information, while acknowledging that varied cultural factors also focus a society’s ability to act on such information. Our analyses demonstrate the analytical importance of completed experiments from the past, and their utility for contemporary debates concerning managing imperfect information and addressing conflicting priorities in modern environmental management and resource use.”