Fluctuating landscapes and heavy tails in animal behavior.

ArXiv Pub Date : 2024-04-16
Antonio Carlos Costa, Gautam Sridhar, Claire Wyart, Massimo Vergassola
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Abstract

Animal behavior is shaped by a myriad of mechanisms acting on a wide range of scales, which hampers quantitative reasoning and the identification of general principles. Here, we combine data analysis and theory to investigate the relationship between behavioral plasticity and heavy-tailed statistics often observed in animal behavior. Specifically, we first leverage high-resolution recordings of C. elegans locomotion to show that stochastic transitions among long-lived behaviors exhibit heavy-tailed first passage time distributions and correlation functions. Such heavy tails can be explained by slow adaptation of behavior over time. This particular result motivates our second step of introducing a general model where we separate fast dynamics on a quasi-stationary multi-well potential, from non-ergodic, slowly varying modes. We then show that heavy tails generically emerge in such a model, and we provide a theoretical derivation of the resulting functional form, which can become a power law with exponents that depend on the strength of the fluctuations. Finally, we provide direct support for the generality of our findings by testing them in a C. elegans mutant where adaptation is suppressed and heavy tails thus disappear, and recordings of larval zebrafish swimming behavior where heavy tails are again prevalent.

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缓慢驱动随机过程中的突发复杂性。
我们考虑在存在非遍历模式的情况下第一次通过时间事件的分布,这些非遍历模式在潜在景观上驱动遍历动力学。我们发现,在足够慢和足够大的波动极限下,第一次通过时间事件f(t)的分布表现出由指数为f(t)~t-2的幂律支配的重尾,以及取决于波动强度和性质的校正。我们通过示例中的直接数值模拟来支持我们的理论发现。
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