Design for an individual: connectionist approaches to the evolutionary transitions in individuality
Design for an individual: connectionist approaches to the evolutionary transitions in individuality
The truly surprising thing about evolution is not how it makes individuals better adapted to their environment, but how it makes individuals. All individuals are made of parts that used to be individuals themselves, e.g., multicellular organisms from unicellular organisms. In such evolutionary transitions in individuality, the organised structure of relationships between component parts causes them to work together, creating a new organismic entity and a new evolutionary unit on which selection can act. However, the principles of these transitions remain poorly understood. In particular, the process of transition must be explained by “bottom-up” selection, i.e., on the existing lower-level evolutionary units, without presupposing the higher-level evolutionary unit we are trying to explain. In this hypothesis and theory manuscript we address the conditions for evolutionary transitions in individuality by exploiting adaptive principles already known in learning systems. Connectionist learning models, well-studied in neural networks, demonstrate how networks of organised functional relationships between components, sufficient to exhibit information integration and collective action, can be produced via fully-distributed and unsupervised learning principles, i.e., without centralised control or an external teacher. Evolutionary connectionism translates these distributed learning principles into the domain of natural selection, and suggests how relationships among evolutionary units could become adaptively organised by selection from below without presupposing genetic relatedness or selection on collectives. In this manuscript, we address how connectionist models with a particular interaction structure might explain transitions in individuality. We explore the relationship between the interaction structures necessary for (a) evolutionary individuality (where the evolution of the whole is a non-decomposable function of the evolution of the parts), (b) organismic individuality (where the development and behaviour of the whole is a non-decomposable function of the behaviour of component parts) and (c) non-linearly separable functions, familiar in connectionist models (where the output of the network is a non-decomposable function of the inputs). Specifically, we hypothesise that the conditions necessary to evolve a new level of individuality are described by the conditions necessary to learn non-decomposable functions of this type (or deep model induction) familiar in connectionist models of cognition and learning.
adaptation, basal cognition, deep learning, development, evolution, evolutionary connectionism, multi-level selection, natural selection
Watson, Richard A.
ce199dfc-d5d4-4edf-bd7b-f9e224c96c75
Levin, Michael
6d5972ec-9c46-4603-b7e0-c811137f69ed
Buckley, Christopher
c8b2c571-973b-4b51-8bca-e50ad3348cb7
28 March 2022
Watson, Richard A.
ce199dfc-d5d4-4edf-bd7b-f9e224c96c75
Levin, Michael
6d5972ec-9c46-4603-b7e0-c811137f69ed
Buckley, Christopher
c8b2c571-973b-4b51-8bca-e50ad3348cb7
Watson, Richard A., Levin, Michael and Buckley, Christopher
(2022)
Design for an individual: connectionist approaches to the evolutionary transitions in individuality.
Frontiers in Ecology and Evolution, 10, [823588].
(doi:10.3389/fevo.2022.823588).
Abstract
The truly surprising thing about evolution is not how it makes individuals better adapted to their environment, but how it makes individuals. All individuals are made of parts that used to be individuals themselves, e.g., multicellular organisms from unicellular organisms. In such evolutionary transitions in individuality, the organised structure of relationships between component parts causes them to work together, creating a new organismic entity and a new evolutionary unit on which selection can act. However, the principles of these transitions remain poorly understood. In particular, the process of transition must be explained by “bottom-up” selection, i.e., on the existing lower-level evolutionary units, without presupposing the higher-level evolutionary unit we are trying to explain. In this hypothesis and theory manuscript we address the conditions for evolutionary transitions in individuality by exploiting adaptive principles already known in learning systems. Connectionist learning models, well-studied in neural networks, demonstrate how networks of organised functional relationships between components, sufficient to exhibit information integration and collective action, can be produced via fully-distributed and unsupervised learning principles, i.e., without centralised control or an external teacher. Evolutionary connectionism translates these distributed learning principles into the domain of natural selection, and suggests how relationships among evolutionary units could become adaptively organised by selection from below without presupposing genetic relatedness or selection on collectives. In this manuscript, we address how connectionist models with a particular interaction structure might explain transitions in individuality. We explore the relationship between the interaction structures necessary for (a) evolutionary individuality (where the evolution of the whole is a non-decomposable function of the evolution of the parts), (b) organismic individuality (where the development and behaviour of the whole is a non-decomposable function of the behaviour of component parts) and (c) non-linearly separable functions, familiar in connectionist models (where the output of the network is a non-decomposable function of the inputs). Specifically, we hypothesise that the conditions necessary to evolve a new level of individuality are described by the conditions necessary to learn non-decomposable functions of this type (or deep model induction) familiar in connectionist models of cognition and learning.
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fevo-10-823588
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Accepted/In Press date: 18 January 2022
Published date: 28 March 2022
Additional Information:
Funding Information:
RW and ML gratefully acknowledge the support of Grant 62230 and Grant 62212, respectively, from the John Templeton Foundation. CB was supported by BBRSC grant BB/P022197/1.
Publisher Copyright:
Copyright © 2022 Watson, Levin and Buckley.
Keywords:
adaptation, basal cognition, deep learning, development, evolution, evolutionary connectionism, multi-level selection, natural selection
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Local EPrints ID: 471168
URI: http://eprints.soton.ac.uk/id/eprint/471168
PURE UUID: 8645a144-071a-47ed-92a3-9d426f225dc1
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Date deposited: 28 Oct 2022 17:19
Last modified: 17 Mar 2024 03:00
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Author:
Richard A. Watson
Author:
Michael Levin
Author:
Christopher Buckley
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