Authors
Willem E Frankenhuis, Karthik Panchanathan, Andrew G Barto
Publication date
2019/4/1
Source
Behavioural Processes
Volume
161
Pages
94-100
Publisher
Elsevier
Description
This article focuses on the division of labor between evolution and development in solving sequential, state-dependent decision problems. Currently, behavioral ecologists tend to use dynamic programming methods to study such problems. These methods are successful at predicting animal behavior in a variety of contexts. However, they depend on a distinct set of assumptions. Here, we argue that behavioral ecology will benefit from drawing more than it currently does on a complementary collection of tools, called reinforcement learning methods. These methods allow for the study of behavior in highly complex environments, which conventional dynamic programming methods do not feasibly address. In addition, reinforcement learning methods are well-suited to studying how biological mechanisms solve developmental and learning problems. For instance, we can use them to study simple rules that perform well …
Total citations
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Scholar articles
WE Frankenhuis, K Panchanathan, AG Barto - Behavioural Processes, 2019