TY - JOUR
T1 - Sex with no regrets
T2 - How sexual reproduction uses a no regret learning algorithm for evolutionary advantage
AU - Edhan, Omer
AU - Hellman, Ziv
AU - Sherill-Rofe, Dana
N1 - Publisher Copyright:
© 2017
PY - 2017/8/7
Y1 - 2017/8/7
N2 - The question of ‘why sex’ has long been a puzzle. The randomness of recombination, which potentially produces low fitness progeny, contradicts notions of fitness landscape hill climbing. We use the concept of evolution as an algorithm for learning unpredictable environments to provide a possible answer. While sex and asex both implement similar machine learning no-regret algorithms in the context of random samples that are small relative to a vast genotype space, the algorithm of sex constitutes a more efficient goal-directed walk through this space. Simulations indicate this gives sex an evolutionary advantage, even in stable, unchanging environments. Asexual populations rapidly reach a fitness plateau, but the learning aspect of the no-regret algorithm most often eventually boosts the fitness of sexual populations past the maximal viability of corresponding asexual populations. In this light, the randomness of sexual recombination is not a hindrance but a crucial component of the ‘sampling for learning’ algorithm of sexual reproduction.
AB - The question of ‘why sex’ has long been a puzzle. The randomness of recombination, which potentially produces low fitness progeny, contradicts notions of fitness landscape hill climbing. We use the concept of evolution as an algorithm for learning unpredictable environments to provide a possible answer. While sex and asex both implement similar machine learning no-regret algorithms in the context of random samples that are small relative to a vast genotype space, the algorithm of sex constitutes a more efficient goal-directed walk through this space. Simulations indicate this gives sex an evolutionary advantage, even in stable, unchanging environments. Asexual populations rapidly reach a fitness plateau, but the learning aspect of the no-regret algorithm most often eventually boosts the fitness of sexual populations past the maximal viability of corresponding asexual populations. In this light, the randomness of sexual recombination is not a hindrance but a crucial component of the ‘sampling for learning’ algorithm of sexual reproduction.
KW - Evolution
KW - Learning algorithms
KW - Sexual reproduction
UR - http://www.scopus.com/inward/record.url?scp=85019738510&partnerID=8YFLogxK
U2 - 10.1016/j.jtbi.2017.05.018
DO - 10.1016/j.jtbi.2017.05.018
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C2 - 28522360
AN - SCOPUS:85019738510
SN - 0022-5193
VL - 426
SP - 67
EP - 81
JO - Journal of Theoretical Biology
JF - Journal of Theoretical Biology
ER -