Department of Neuroscience, Northwestern University Feinberg School of Medicine, Chicago, IL 60611, USA.
Curr Opin Neurobiol. 2022 Jun;74:102549. doi: 10.1016/j.conb.2022.102549. Epub 2022 May 7.
In the past few years, advances in machine learning have fueled an explosive growth of descriptive and generative models of animal behavior. These new approaches offer higher levels of detail and granularity than has previously been possible, allowing for fine-grained segmentation of animals' actions and precise quantitative mappings between an animal's sensory environment and its behavior. How can these new methods help us understand the governing principles shaping complex and naturalistic behavior? In this review, we will recap ways in which our ability to detect and model behavior have improved in recent years, and consider how these techniques might be used to revisit classical normative theories of behavioral control.
在过去的几年中,机器学习的进步推动了描述性和生成性动物行为模型的飞速发展。这些新方法比以往任何时候都能提供更高水平的细节和粒度,从而可以对动物的动作进行细粒度的分割,并在动物的感觉环境与其行为之间进行精确的定量映射。这些新方法如何帮助我们理解塑造复杂和自然行为的基本原理?在这篇综述中,我们将回顾近年来我们检测和建模行为的能力是如何提高的,并考虑这些技术如何用于重新审视行为控制的经典规范理论。