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基于价值的概率推理中整合先验知识和可能性的神经机制。

Neural mechanisms for integrating prior knowledge and likelihood in value-based probabilistic inference.

作者信息

Ting Chih-Chung, Yu Chia-Chen, Maloney Laurence T, Wu Shih-Wei

机构信息

Institute of Neuroscience and.

School of Medicine, Taipei Medical University, Taipei, 110 Taiwan, and.

出版信息

J Neurosci. 2015 Jan 28;35(4):1792-805. doi: 10.1523/JNEUROSCI.3161-14.2015.

Abstract

In Bayesian decision theory, knowledge about the probabilities of possible outcomes is captured by a prior distribution and a likelihood function. The prior reflects past knowledge and the likelihood summarizes current sensory information. The two combined (integrated) form a posterior distribution that allows estimation of the probability of different possible outcomes. In this study, we investigated the neural mechanisms underlying Bayesian integration using a novel lottery decision task in which both prior knowledge and likelihood information about reward probability were systematically manipulated on a trial-by-trial basis. Consistent with Bayesian integration, as sample size increased, subjects tended to weigh likelihood information more compared with prior information. Using fMRI in humans, we found that the medial prefrontal cortex (mPFC) correlated with the mean of the posterior distribution, a statistic that reflects the integration of prior knowledge and likelihood of reward probability. Subsequent analysis revealed that both prior and likelihood information were represented in mPFC and that the neural representations of prior and likelihood in mPFC reflected changes in the behaviorally estimated weights assigned to these different sources of information in response to changes in the environment. Together, these results establish the role of mPFC in prior-likelihood integration and highlight its involvement in representing and integrating these distinct sources of information.

摘要

在贝叶斯决策理论中,关于可能结果概率的知识由先验分布和似然函数来体现。先验反映过去的知识,似然则总结当前的感官信息。两者结合(整合)形成后验分布,从而能够估计不同可能结果的概率。在本研究中,我们使用一种新颖的彩票决策任务来探究贝叶斯整合背后的神经机制,在该任务中,关于奖励概率的先验知识和似然信息在每次试验的基础上被系统地操纵。与贝叶斯整合一致,随着样本量增加,与先验信息相比,受试者倾向于更看重似然信息。利用人类功能磁共振成像(fMRI),我们发现内侧前额叶皮层(mPFC)与后验分布的均值相关,该统计量反映了先验知识和奖励概率似然性的整合。后续分析表明,先验信息和似然信息都在mPFC中得到体现,并且mPFC中先验和似然的神经表征反映了行为估计权重的变化,这些权重是针对不同信息源根据环境变化而分配的。总之,这些结果确立了mPFC在先验 - 似然整合中的作用,并突出了其在表征和整合这些不同信息源方面的参与。

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