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使用反应时和漂移扩散建模改进两阶段决策任务中基于模型的决策估计的可靠性。

Improving the reliability of model-based decision-making estimates in the two-stage decision task with reaction-times and drift-diffusion modeling.

机构信息

Wellcome Centre for Human Neuroimaging, University College London, London, United Kingdom.

Max Planck UCL Centre for Computational Psychiatry and Ageing Research, London, United Kingdom.

出版信息

PLoS Comput Biol. 2019 Feb 13;15(2):e1006803. doi: 10.1371/journal.pcbi.1006803. eCollection 2019 Feb.

Abstract

A well-established notion in cognitive neuroscience proposes that multiple brain systems contribute to choice behaviour. These include: (1) a model-free system that uses values cached from the outcome history of alternative actions, and (2) a model-based system that considers action outcomes and the transition structure of the environment. The widespread use of this distinction, across a range of applications, renders it important to index their distinct influences with high reliability. Here we consider the two-stage task, widely considered as a gold standard measure for the contribution of model-based and model-free systems to human choice. We tested the internal/temporal stability of measures from this task, including those estimated via an established computational model, as well as an extended model using drift-diffusion. Drift-diffusion modeling suggested that both choice in the first stage, and RTs in the second stage, are directly affected by a model-based/free trade-off parameter. Both parameter recovery and the stability of model-based estimates were poor but improved substantially when both choice and RT were used (compared to choice only), and when more trials (than conventionally used in research practice) were included in our analysis. The findings have implications for interpretation of past and future studies based on the use of the two-stage task, as well as for characterising the contribution of model-based processes to choice behaviour.

摘要

认知神经科学中有一个既定的概念,即多个大脑系统有助于选择行为。这些系统包括:(1)一种无模型系统,它使用从替代动作的结果历史中缓存的值,以及(2)一种基于模型的系统,它考虑动作结果和环境的转换结构。由于这种区分在各种应用中广泛使用,因此以高度可靠性来索引它们的不同影响非常重要。在这里,我们考虑了两阶段任务,该任务通常被认为是衡量基于模型和无模型系统对人类选择的贡献的黄金标准。我们测试了来自该任务的测量结果的内部/时间稳定性,包括通过已建立的计算模型以及使用漂移扩散模型估计的那些测量结果。漂移扩散模型表明,第一阶段的选择以及第二阶段的 RT 都直接受到基于模型/无模型权衡参数的影响。参数恢复和基于模型的估计的稳定性都很差,但当同时使用选择和 RT(与仅选择相比)以及当我们的分析中包含更多的试验(比传统的研究实践中使用的)时,情况会得到显著改善。这些发现对基于两阶段任务使用的过去和未来研究的解释具有影响,并且对基于模型的过程对选择行为的贡献进行了描述。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/58c7/6391008/3e635a7bc1f4/pcbi.1006803.g001.jpg

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