Submitted:
15 July 2024
Posted:
16 July 2024
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Computers as Telescopes
3. Promises and Limits
4. Interactions
5. Self-Organization
6. Emergence
7. Balance
8. Inconclusion
Acknowledgments
References
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| 1 | The word “complexity” comes from the Latin plexus, which could be translated as “entwined”. We can thus say that complex systems are those whose elements are difficult to separate [33]. This is because there are relevant interactions among them [48]. Thus, the traditional reductionist approach that simplifies and isolates in order to predict is inadequate to study complexity [47]. |
| 2 | |
| 3 | Also known as “control and communication in animals and machines” [127]. |
| 4 | Well, he was also student of Julia. And his uncle Szolem (who knew Sierpiński) had suggested him to work on iterative functions. And he was extremely smart. |
| 5 | Certainly, the history of pahtology is much more complex than that [85]. |
| 6 | I am not suggesting that the failed attempts will never be achieved. Nor that relevant progress has not been made. My argument explained below is that we will not achieve them with the limited methods we have now, although this does not imply that new methods may be eventually developed that might overcome the present limits. |
| 7 | One example comes from personal conversations with David Wolpert, who does not believe on downward causation, but concedes that it might be that in some cases, in practice it might be easier to predict lower scale phenomena from higher scale properties, similar to one way functions used in cryptography: in reality, the higher scale is caused by the lower one, but in practice, it is not computable. Another view is that speaking about causality between scales is a conceptual mistake, since independently of observers, phenomena occur at all scales [p. 31 [44]. It is only our descriptions that represent limited aspects of phenomena at particular scales. |
| 8 | A stationary problem does not change in time, so once a solution is found, it will remain valid. A non-stationary problem does change in time, so novel solutions should be found, ideally as fast as the problem changes [44]. |
| 9 | We can roughly define balance as that which avoids extremes. |
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