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Alam, Mohammad S; Asari, Vijayan K (Ed.)Free, publicly-accessible full text available May 28, 2026
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Alam, Mohammad S; Asari, Vijayan K (Ed.)Free, publicly-accessible full text available May 28, 2026
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Alam, Mohammad S; Asari, Vijayan K (Ed.)Free, publicly-accessible full text available May 28, 2026
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Alam, Mohammad S; Asari, Vijayan K (Ed.)
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Agaian, Sos S; DelMarco, Stephen P; Asari, Vijayan K (Ed.)
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Abstract This manuscript presents an algorithmic approach to cooperation in biological systems, drawing on fundamental ideas from statistical mechanics and probability theory. Fisher’s geometric model of adaptation suggests that the evolution of organisms well adapted to multiple constraints comes at a significant complexity cost. By utilizing combinatorial models of fitness, we demonstrate that the probability of adapting to all constraints decreases exponentially with the number of constraints, thereby generalizing Fisher’s result. Our main focus is understanding how cooperation can overcome this adaptivity barrier. Through these combinatorial models, we demonstrate that when an organism needs to adapt to a multitude of environmental variables, division of labor emerges as the only viable evolutionary strategy.more » « less
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Alam, Mohammad S.; Asari, Vijayan K. (Ed.)
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Abstract Climate emulators are a powerful instrument for climate modeling, especially in terms of reducing the computational load for simulating spatiotemporal processes associated with climate systems. The most important type of emulators are statistical emulators trained on the output of an ensemble of simulations from various climate models. However, such emulators oftentimes fail to capture the “physics” of a system that can be detrimental for unveiling critical processes that lead to climate tipping points. Historically, statistical mechanics emerged as a tool to resolve the constraints on physics using statistics. We discuss how climate emulators rooted in statistical mechanics and machine learning can give rise to new climate models that are more reliable and require less observational and computational resources. Our goal is to stimulate discussion on how statistical climate emulators can further be improved with the help of statistical mechanics which, in turn, may reignite the interest of statistical community in statistical mechanics of complex systems.more » « less
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