Valone Thomas J
Department of Biology Saint Louis University Saint Louis Missouri USA.
Ecol Evol. 2024 Jul 11;14(7):e11495. doi: 10.1002/ece3.11495. eCollection 2024 Jul.
Animals often make decisions without perfect knowledge of environmental parameters like the quality of an encountered food patch or a potential mate. Theoreticians often assume animals make such decisions using a Bayesian updating process that combines prior information about the frequency distribution of resources in the environment with sample information from an encountered resource; such a process leads to decisions that maximize fitness, given the available information. I examine three aspects of empirical work that shed light on the idea that animals can make such decisions in a Bayesian-like manner. First, many animals are sensitive to variance differences in behavioral options, one metric used to characterize frequency distributions. Second, several species use information about the relative frequency of preferred versus nonpreferred items in different populations to make probabilistic inferences about samples taken from populations in a manner that results in maximizing the likelihood of obtaining a preferred reward. Third, the predictions of Bayesian models often match the behavior of individuals in two main approaches. One approach compares behavior to models that make different assumptions about how individuals estimate the quality of an environmental parameter. The patch exploitation behavior of nine species of birds and mammals has matched the predictions of Bayesian models. The other approach compares the behavior of individuals who learn, through experience, different frequency distributions of resources in their environment. The behavior of three bird species and bumblebees exploiting food patches and fruit flies selecting mates is influenced by their experience learning different frequency distributions of food and mates, respectively, in ways consistent with Bayesian models. These studies lend support to the idea that animals may combine prior and sample information in a Bayesian-like manner to make decisions under uncertainty, but additional work on a greater diversity of species is required to better understand the generality of this ability.
动物在对环境参数缺乏全面了解的情况下常常会做出决策,比如遇到的食物斑块的质量或潜在配偶的情况。理论学家通常认为,动物通过贝叶斯更新过程做出此类决策,该过程将关于环境中资源频率分布的先验信息与来自所遇到资源的样本信息相结合;在给定可用信息的情况下,这样的过程会导致做出使适应性最大化的决策。我研究了实证研究的三个方面,这些方面有助于阐明动物能够以类似贝叶斯的方式做出此类决策这一观点。首先,许多动物对行为选项中的方差差异敏感,方差是用于描述频率分布的一个指标。其次,一些物种利用不同种群中偏好项目与非偏好项目的相对频率信息,对从种群中抽取的样本进行概率推断,其结果是使获得偏好奖励的可能性最大化。第三,贝叶斯模型的预测通常在两种主要方法中与个体行为相匹配。一种方法是将行为与对个体如何估计环境参数质量做出不同假设的模型进行比较。九种鸟类和哺乳动物的斑块利用行为与贝叶斯模型的预测相匹配。另一种方法是比较通过经验了解其环境中不同资源频率分布的个体的行为。三种鸟类和大黄蜂利用食物斑块的行为以及果蝇选择配偶的行为,分别受到它们学习食物和配偶不同频率分布经验的影响,且方式与贝叶斯模型一致。这些研究支持了这样一种观点,即动物可能以类似贝叶斯的方式结合先验信息和样本信息,在不确定情况下做出决策,但需要对更多样化的物种进行更多研究,以更好地理解这种能力的普遍性。