Adaptive Bet-Hedging Revisited: Considerations of Risk and Time Horizon
March 15, 2020 Β· Declared Dead Β· π Bulletin of Mathematical Biology
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Authors
Omri Tal, Tat Dat Tran
arXiv ID
2003.06793
Category
q-bio.PE
Cross-listed
cs.IT
Citations
12
Venue
Bulletin of Mathematical Biology
Last Checked
3 months ago
Abstract
Models of adaptive bet-hedging commonly adopt insights from Kelly's famous work on optimal gambling strategies and the financial value of information. In particular, such models seek evolutionary solutions that maximize long term average growth rate of lineages, even in the face of highly stochastic growth trajectories. Here, we argue for extensive departures from the standard approach to better account for evolutionary contingencies. Crucially, we incorporate considerations of volatility minimization, motivated by interim extinction risk in finite populations, within a finite time horizon approach to growth maximization. We find that a game-theoretic competitive-optimality approach best captures these additional constraints, and derive the equilibria solutions under straightforward fitness payoff functions and extinction risks. We show that for both maximal growth and minimal time relative payoffs the log-optimal strategy is a unique pure-strategy symmetric equilibrium, invariant with evolutionary time horizon and robust to low extinction risks.
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