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Deep Learning for Predicting Human Strategic Behavior

机译:深入学习,以预测人类战略行为

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Predicting the behavior of human participants in strategic settings is an important problem in many domains. Most existing work either assumes that participants are perfectly rational, or attempts to directly model each participant's cognitive processes based on insights from cognitive psychology and experimental economics. In this work, we present an alternative, a deep learning approach that automatically performs cognitive modeling without relying on such expert knowledge. We introduce a novel architecture that allows a single network to generalize across different input and output dimensions by using matrix units rather than scalar units, and show that its performance significantly outperforms that of the previous state of the art, which relies on expert-constructed features.
机译:预测人类参与者在战略环境中的行为是许多领域的重要问题。大多数现有的工作要么假设参与者是完全合理的,或者试图直接模拟基于认知心理学和实验经济学的见解的每个参与者的认知过程。在这项工作中,我们提供了一种替代方案,这是一种深入的学习方法,在不依赖于此类专家知识的情况下自动执行认知建模。我们介绍了一种新颖的架构,它允许单个网络通过使用矩阵单元而不是标量单元来概括不同的输入和输出尺寸,并表明其性能显着优于上述现有技术的表现,这依赖于专家构造的功能。

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