DeDe宝 (2022-07-05 22:49):
#paper doi:10.1016/j.tics.2015.03.002 TRENDS IN COGNITIVE SCIENCES, 2015, A Bayesian perspective on magnitude estimation. 这篇综述可以结合作者11年发表的Iterative Bayesian Estimation as an Explanation for Range and Regression Effects: A Study on Human Path Integration(DOI:10.1523/JNEUROSCI.2028-11.2011)一起看。综述简要介绍了人类被试估计物理量(如距离估计、角度估计、时长估计)时的行为特征,如回归效应、范围效应、序列效应等,并使用贝叶斯模型模拟并解释行为特征。综述还列举了贝叶斯模型在心理物理学、神经成像研究和临床研究中的应用,适合贝叶斯模型入门。11年的文章里有对经典贝叶斯模型(固定先验)和二阶贝叶斯模型(可迭代先验)的详细推导。
A Bayesian perspective on magnitude estimation
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Abstract:
Our representation of the physical world requires judgments of magnitudes, such as loudness, distance, or time. Interestingly, magnitude estimates are often not veridical but subject to characteristic biases. These biases are strikingly similar across different sensory modalities, suggesting common processing mechanisms that are shared by different sensory systems. However, the search for universal neurobiological principles of magnitude judgments requires guidance by formal theories. Here, we discuss a unifying Bayesian framework for understanding biases in magnitude estimation. This Bayesian perspective enables a re-interpretation of a range of established psychophysical findings, reconciles seemingly incompatible classical views on magnitude estimation, and can guide future investigations of magnitude estimation and its neurobiological mechanisms in health and in psychiatric diseases, such as schizophrenia.
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