Time-varying decision boundaries: insights from optimality analysis

被引:0
|
作者
Gaurav Malhotra
David S. Leslie
Casimir J. H. Ludwig
Rafal Bogacz
机构
[1] University of Bristol,School of Experimental Psychology
[2] Lancaster University,Department of Mathematics and Statistics
[3] University of Oxford,MRC Brain Networks Dynamics Unit
来源
Psychonomic Bulletin & Review | 2018年 / 25卷
关键词
Decision-making; Decreasing bounds; Optimal decisions; Reward rate;
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中图分类号
学科分类号
摘要
The most widely used account of decision-making proposes that people choose between alternatives by accumulating evidence in favor of each alternative until this evidence reaches a decision boundary. It is frequently assumed that this decision boundary stays constant during a decision, depending on the evidence collected but not on time. Recent experimental and theoretical work has challenged this assumption, showing that constant decision boundaries are, in some circumstances, sub-optimal. We introduce a theoretical model that facilitates identification of the optimal decision boundaries under a wide range of conditions. Time-varying optimal decision boundaries for our model are a result only of uncertainty over the difficulty of each trial and do not require decision deadlines or costs associated with collecting evidence, as assumed by previous authors. Furthermore, the shape of optimal decision boundaries depends on the difficulties of different decisions. When some trials are very difficult, optimal boundaries decrease with time, but for tasks that only include a mixture of easy and medium difficulty trials, the optimal boundaries increase or stay constant. We also show how this simple model can be extended to more complex decision-making tasks such as when people have unequal priors or when they can choose to opt out of decisions. The theoretical model presented here provides an important framework to understand how, why, and whether decision boundaries should change over time in experiments on decision-making.
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页码:971 / 996
页数:25
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