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利用决策和运动噪声预测探索性运动学习

Predicting explorative motor learning using decision-making and motor noise.

作者信息

Chen Xiuli, Mohr Kieran, Galea Joseph M

机构信息

School of Psychology, University of Birmingham, Birmingham, United Kingdom.

出版信息

PLoS Comput Biol. 2017 Apr 24;13(4):e1005503. doi: 10.1371/journal.pcbi.1005503. eCollection 2017 Apr.

Abstract

A fundamental problem faced by humans is learning to select motor actions based on noisy sensory information and incomplete knowledge of the world. Recently, a number of authors have asked whether this type of motor learning problem might be very similar to a range of higher-level decision-making problems. If so, participant behaviour on a high-level decision-making task could be predictive of their performance during a motor learning task. To investigate this question, we studied performance during an explorative motor learning task and a decision-making task which had a similar underlying structure with the exception that it was not subject to motor (execution) noise. We also collected an independent measurement of each participant's level of motor noise. Our analysis showed that explorative motor learning and decision-making could be modelled as the (approximately) optimal solution to a Partially Observable Markov Decision Process bounded by noisy neural information processing. The model was able to predict participant performance in motor learning by using parameters estimated from the decision-making task and the separate motor noise measurement. This suggests that explorative motor learning can be formalised as a sequential decision-making process that is adjusted for motor noise, and raises interesting questions regarding the neural origin of explorative motor learning.

摘要

人类面临的一个基本问题是学会根据有噪声的感官信息和对世界的不完整了解来选择运动动作。最近,一些作者提出,这类运动学习问题是否可能与一系列高级决策问题非常相似。如果是这样,参与者在高级决策任务中的行为可能会预测他们在运动学习任务中的表现。为了研究这个问题,我们研究了一项探索性运动学习任务和一项决策任务中的表现,这两项任务具有相似的底层结构,唯一的区别是决策任务不受运动(执行)噪声的影响。我们还独立测量了每个参与者的运动噪声水平。我们的分析表明,探索性运动学习和决策可以被建模为一个由有噪声的神经信息处理界定的部分可观测马尔可夫决策过程的(近似)最优解。该模型能够通过使用从决策任务和单独的运动噪声测量中估计的参数来预测参与者在运动学习中的表现。这表明探索性运动学习可以被形式化为一个针对运动噪声进行调整的顺序决策过程,并引发了关于探索性运动学习的神经起源的有趣问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e674/5421818/dc636bc105ab/pcbi.1005503.g001.jpg

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