4.3 Article

A computational model of symbiotic composition in evolutionary transitions

Journal

BIOSYSTEMS
Volume 69, Issue 2-3, Pages 187-209

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/S0303-2647(02)00135-1

Keywords

symbiogenesis; major evolutionary transitions; evolutionary computation; evolutionary algorithms; symbiogenic evolutionary adaptation model; hierarchical-if-and-only-if (HIFF)

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Several of the major transitions in evolutionary history, such as the symbiogenic origin of eukaryotes from prokaryotes, share the feature that existing entities became the components of composite entities at a higher-level of organization. This composition of pre-adapted extant entities into a new whole is a fundamentally different source of variation from the gradual accumulation of small random variations, and it has some interesting consequences for issues of evolvability. Intuitively, the pre-adaptation of sets of features in reproductively independent specialists suggests a form of 'divide and conquer' decomposition of the adaptive domain. Moreover, the compositions resulting from one level may become the components for compositions at the next level, thus scaling-up the variation mechanism. In this paper, we explore and develop these concepts using a simple abstract model of symbiotic composition to examine its impact on evolvability. To exemplify the adaptive capacity of the composition model, we employ a scale-invariant fitness landscape exhibiting significant ruggedness at all scales. Whilst innovation by mutation and by conventional evolutionary algorithms becomes increasingly more difficult as evolution continues in this landscape, innovation by composition is not impeded as it discovers and assembles component entities through successive hierarchical levels. (C) 2002 Elsevier Science Ireland Ltd. All rights reserved.

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