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合并过程中的离群值剔除。

Outlier rejection in the process of pooling.

机构信息

Department of Philosophy, Yonsei University, Seoul, South Korea.

Graduate Program in Cognitive Science, Yonsei University, Seoul, South Korea.

出版信息

Atten Percept Psychophys. 2024 Feb;86(2):666-679. doi: 10.3758/s13414-023-02842-x. Epub 2024 Jan 8.

Abstract

Ensemble perception allows our visual system to process large amounts of information efficiently by summarizing its statistical properties. A key aspect of ensemble perception is the devaluation of outlying elements, which leads to more informative summary statistics with reduced variance and a more representative mean. However, the mechanisms underlying this outlier rejection process are not well understood. One possibility is that outliers are selectively excluded before summarization. To test this, we investigated whether only weaker items were excluded from averaging. We manipulated the encoding strength of items in a display by changing the emotional intensities of faces, the spatial location of emotional outliers, and the spatial distribution of emotional faces. We found that the response to outliers varied depending on their location. Specifically, outliers were more likely to be excluded from averaging when presented in more peripheral regions, while their exclusion was partial in parafoveal regions. In other words, outlier rejection in ensemble processing is more flexible than the supposed rigid designation of weighting against outliers. Alternatively, the results fit well with hierarchically structured pooling, during which outliers are discounted more dynamically without positing any separate selective mechanism before summarization. We propose an explanation for outlier rejection in light of a recently proposed population response model of ensemble processing.

摘要

集合感知使我们的视觉系统能够通过总结其统计特性来有效地处理大量信息。集合感知的一个关键方面是对离群元素的低估,这导致了具有更小方差和更具代表性的均值的更具信息量的汇总统计信息。然而,这种离群值拒绝过程的机制尚不清楚。一种可能性是在汇总之前有选择地排除离群值。为了验证这一点,我们研究了是否仅从平均值中排除较弱的项目。我们通过改变面部的情绪强度、情绪异常值的空间位置以及情绪面孔的空间分布来操纵显示中的项目编码强度。我们发现,离群值的响应取决于它们的位置而有所不同。具体来说,当离群值出现在更外围的区域时,更有可能被排除在平均值之外,而在旁中心区域则是部分排除。换句话说,在集合处理中,离群值的拒绝比预期的对离群值的加权的刚性指定更为灵活。或者,这些结果与层次结构的汇集非常吻合,在该汇集过程中,无需在汇总之前提出任何单独的选择机制,就可以更动态地扣除离群值。我们根据最近提出的集合处理的群体反应模型,提出了一种对离群值拒绝的解释。

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