Switching costs in stochastic environments drive the emergence of matching behaviour in animal decision-making through the promotion of reward learning strategies

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作者
Nan Lyu
Yunbiao Hu
Jiahua Zhang
Huw Lloyd
Yue-Hua Sun
Yi Tao
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[1] Beijing Normal University,Ministry of Education Key Laboratory for Biodiversity and Ecological Engineering, College of Life Sciences
[2] Chinese Academy of Sciences,Key Laboratory of Animal Ecology and Conservation Biology, Institute of Zoology
[3] Manchester Metropolitan University,Department of Natural Sciences, Faculty of Science and Engineering
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A principle of choice in animal decision-making named probability matching (PM) has long been detected in animals, and can arise from different decision-making strategies. Little is known about how environmental stochasticity may influence the switching time of these different decision-making strategies. Here we address this problem using a combination of behavioral and theoretical approaches, and show, that although a simple Win-Stay-Loss-Shift (WSLS) strategy can generate PM in binary-choice tasks theoretically, budgerigars (Melopsittacus undulates) actually apply a range of sub-tactics more often when they are expected to make more accurate decisions. Surprisingly, budgerigars did not get more rewards than would be predicted when adopting a WSLS strategy, and their decisions also exhibited PM. Instead, budgerigars followed a learning strategy based on reward history, which potentially benefits individuals indirectly from paying lower switching costs. Furthermore, our data suggest that more stochastic environments may promote reward learning through significantly less switching. We suggest that switching costs driven by the stochasticity of an environmental niche can potentially represent an important selection pressure associated with decision-making that may play a key role in driving the evolution of complex cognition in animals.
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