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A general role for medial prefrontal cortex in event prediction

机译:内侧前额叶皮层在事件预测中的一般作用

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摘要

A recent computational neural model of medial prefrontal cortex (mPFC), namely the predicted response-outcome (PRO) model (Alexander and Brown, ), suggests that mPFC learns to predict the outcomes of actions. The model accounted for a wide range of data on the mPFC. Nevertheless, numerous recent findings suggest that mPFC may signal predictions and prediction errors even when the predicted outcomes are not contingent on prior actions. Here we show that the existing PRO model can learn to predict outcomes in a general sense, and not only when the outcomes are contingent on actions. A series of simulations show how this generalized PRO model can account for an even broader range of findings in the mPFC, including human ERP, fMRI, and macaque single-unit data. The results suggest that the mPFC learns to predict salient events in general and provides a theoretical framework that links mPFC function to model-based reinforcement learning, Bayesian learning, and theories of cognitive control.
机译:最近的内侧前额叶皮层(mPFC)的计算神经模型,即预测的反应结果(PRO)模型(Alexander和Brown,)表明,mPFC学会了预测动作的结果。该模型考虑了mPFC上的大量数据。但是,最近的大量发现表明,即使预测的结果不取决于先前的行动,mPFC可能也会发出预测和预测错误的信号。在这里,我们表明,现有的PRO模型可以学会一般意义上的预测结果,而不仅仅是当结果取决于行动时。一系列仿真显示了这种通用的PRO模型如何解释mPFC中更广泛的发现,包括人类ERP,fMRI和猕猴单单位数据。结果表明,mPFC学会了一般地预测显着事件,并提供了将mPFC功能与基于模型的强化学习,贝叶斯学习和认知控制理论联系起来的理论框架。

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