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Percept variance, subadditivity and the metric classification of similarity, and dissimilarity data

机译:感知方差,次可加性以及相似性和不相似性数据的度量分类

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摘要

Percept variance is shown to change the additive property of city-block distances and make city-block distances more subadditive than Euclidean distances. Failure to account for percept variance will result in the misclassification of city-block data as Euclidean. A maximum likelihood estimation procedure is proposed for the multidimensional scaling of similarity data characterized by percept variance. Monte Carlo and empirical experiments are used to evaluate the proposed approach.
机译:感知方差被证明可以改变城市街区距离的加性,并使城市街区距离比欧几里得距离更具有亚可加性。如果不考虑感知方差,将导致将城市街区数据分类为欧几里得。针对以感知方差为特征的相似度数据的多维缩放,提出了一种最大似然估计程序。蒙特卡罗和经验实验被用来评估该方法。

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