相似判断的序特征。

ArXiv Pub Date : 2024-09-05
Jonathan D Victor, Guillermo Aguilar, Suniyya A Waraich
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引用次数: 0

摘要

表征感知或语义领域内的相似性判断,并从这些判断中推断出该领域的潜在结构,在认知和系统神经科学中发挥着越来越重要的作用。为此,我们提出了一个新的框架,对感知距离如何转换为相似性判断做出了非常有限的假设。该方法从相对相似性的经验判断数据集开始:受试者从两个比较刺激中选择一个与参考刺激更相似的次数。这些经验判断提供了下属选择概率的贝叶斯估计。从这些估计中,我们导出了表征判断集的三个指数,分别测量与对称不相似性的一致性、与超度量空间的一致性和与加性树的一致性。我们用几个视觉领域中的不相似性判断的示例心理物理数据集来说明这种方法,并提供了实现分析的代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Ordinal Characterization of Similarity Judgments.

Ordinal Characterization of Similarity Judgments.

Ordinal Characterization of Similarity Judgments.

Ordinal Characterization of Similarity Judgments.

Characterizing judgments of similarity within a perceptual or semantic domain, and making inferences about the underlying structure of this domain from these judgments, has an increasingly important role in cognitive and systems neuroscience. We present a new framework for this purpose that makes limited assumptions about how perceptual distances are converted into similarity judgments. The approach starts from a dataset of empirical judgments of relative similarities: the fraction of times that a subject chooses one of two comparison stimuli to be more similar to a reference stimulus. These empirical judgments provide Bayesian estimates of underling choice probabilities. From these estimates, we derive indices that characterize the set of judgments in three ways: compatibility with a symmetric dis-similarity, compatibility with an ultrametric space, and compatibility with an additive tree. Each of the indices is derived from rank-order relationships among the choice probabilities that, as we show, are necessary and sufficient for local consistency with the three respective characteristics. We illustrate this approach with simulations and example psychophysical datasets of dis-similarity judgments in several visual domains and provide code that implements the analyses at https://github.com/jvlab/simrank.

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