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Optimizing sequential decisions in the drift-diffusion model

机译:优化漂移扩散模型中的顺序决策

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摘要

To make decisions organisms often accumulate information across multiple timescales. However, most experimental and modeling studies of decision-making focus on sequences of independent trials. On the other hand, natural environments are characterized by long temporal correlations, and evidence used to make a present choice is often relevant to future decisions. To understand decision-making under these conditions we analyze how a model ideal observer accumulates evidence to freely make choices across a sequence of correlated trials. We use principles of probabilistic inference to show that an ideal observer incorporates information obtained on one trial as an initial bias on the next. This bias decreases the time, but not the accuracy of the next decision. Furthermore, in finite sequences of trials the rate of reward is maximized when the observer deliberates longer for early decisions, but responds more quickly towards the end of the sequence. Our model also explains experimentally observed patterns in decision times and choices, thus providing a mathematically principled foundation for evidence-accumulation models of sequential decisions. (C) 2018 Elsevier Inc. All rights reserved.
机译:做出决策生物通常会在多个时间尺度累积信息。然而,决策对独立试验序列决策的最实验和建模研究。另一方面,自然环境的特征在于长时间相关性,并且用于制定现在选择的证据通常与未来的决策相关。要在这些条件下了解决策,我们分析了模型理想观察者如何积累证据,以便在一系列相关试验中自由做出选择。我们使用概率推断的原则,以表明理想的观察者将在一个试验中获得的信息作为下一个初始偏见。这种偏差减少了时间,但不是下一个决定的准确性。此外,在有限的试验序列中,当观察者倾向于更长的早期决定时,奖励率最大化,但在序列结束时更快地响应。我们的模型还解释了决策时间和选择的实验观察模式,从而为序贯决定的证据累积模型提供了数学上原则的基础。 (c)2018年Elsevier Inc.保留所有权利。

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