Algorithmically probable mutations reproduce aspects of evolution such as convergence rate, genetic memory, and modularity
September 01, 2017 ยท Declared Dead ยท ๐ arXiv.org
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Authors
Santiago Hernรกndez-Orozco, Narsis A. Kiani, Hector Zenil
arXiv ID
1709.00268
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.IT,
q-bio.PE
Citations
9
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Natural selection explains how life has evolved over millions of years from more primitive forms. The speed at which this happens, however, has sometimes defied formal explanations when based on random (uniformly distributed) mutations. Here we investigate the application of a simplicity bias based on a natural but algorithmic distribution of mutations (no recombination) in various examples, particularly binary matrices in order to compare evolutionary convergence rates. Results both on synthetic and on small biological examples indicate an accelerated rate when mutations are not statistical uniform but \textit{algorithmic uniform}. We show that algorithmic distributions can evolve modularity and genetic memory by preservation of structures when they first occur sometimes leading to an accelerated production of diversity but also population extinctions, possibly explaining naturally occurring phenomena such as diversity explosions (e.g. the Cambrian) and massive extinctions (e.g. the End Triassic) whose causes are currently a cause for debate. The natural approach introduced here appears to be a better approximation to biological evolution than models based exclusively upon random uniform mutations, and it also approaches a formal version of open-ended evolution based on previous formal results. These results validate some suggestions in the direction that computation may be an equally important driver of evolution. We also show that inducing the method on problems of optimization, such as genetic algorithms, has the potential to accelerate convergence of artificial evolutionary algorithms.
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