Multi-task reinforcement learning in humans

被引:0
|
作者
Momchil S. Tomov
Eric Schulz
Samuel J. Gershman
机构
[1] Harvard Medical School,Program in Neuroscience
[2] Harvard University,Center for Brain Science
[3] Max Planck Institute for Biological Cybernetics,Department of Psychology
[4] Harvard University,undefined
[5] Center for Brains,undefined
[6] Minds and Machines,undefined
来源
Nature Human Behaviour | 2021年 / 5卷
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摘要
The ability to transfer knowledge across tasks and generalize to novel ones is an important hallmark of human intelligence. Yet not much is known about human multitask reinforcement learning. We study participants’ behaviour in a two-step decision-making task with multiple features and changing reward functions. We compare their behaviour with two algorithms for multitask reinforcement learning, one that maps previous policies and encountered features to new reward functions and one that approximates value functions across tasks, as well as to standard model-based and model-free algorithms. Across three exploratory experiments and a large preregistered confirmatory experiment, our results provide evidence that participants who are able to learn the task use a strategy that maps previously learned policies to novel scenarios. These results enrich our understanding of human reinforcement learning in complex environments with changing task demands.
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页码:764 / 773
页数:9
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