【2h】

Evidence integration in model-based tree search

机译:基于模型的树搜索中的证据集成

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摘要

Research on the dynamics of reward-based, goal-directed decision making has largely focused on simple choice, where participants decide among a set of unitary, mutually exclusive options. Recent work suggests that the deliberation process underlying simple choice can be understood in terms of evidence integration: Noisy evidence in favor of each option accrues over time, until the evidence in favor of one option is significantly greater than the rest. However, real-life decisions often involve not one, but several steps of action, requiring a consideration of cumulative rewards and a sensitivity to recursive decision structure. We present results from two experiments that leveraged techniques previously applied to simple choice to shed light on the deliberation process underlying multistep choice. We interpret the results from these experiments in terms of a new computational model, which extends the evidence accumulation perspective to multiple steps of action.
机译:基于奖励的,目标导向的决策制定的动力学研究主要集中在简单的选择上,参与者可以在一组单一的,互斥的选择中进行决策。最近的工作表明,简单选择的思考过程可以从证据整合的角度进行理解:支持每种选择的嘈杂证据会随着时间的推移而累积,直到支持一种选择的证据远大于其余选择为止。但是,现实生活中的决策通常不涉及一个步骤,而是涉及多个步骤,需要考虑累积奖励和对递归决策结构的敏感性。我们提供了两个实验的结果,这些实验利用了以前应用于简单选择的技术,以阐明多步选择背后的审议过程。我们根据新的计算模型解释了这些实验的结果,该模型将证据积累的观点扩展到了多个步骤。

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