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When Similarity Measures Lie

机译:相似度测谎时

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摘要

Do similarity or distance measures ever go wrong? The inherent subjectivity in similarity discernment has long supported the view that all judgements of similarity are equally valid, and that any selected similarity measure may only be considered more effective in some chosen domain. This paper presents evidence that such a view is incorrect for structural similarity comparisons. Similarity and distance measures occasionally do go wrong, and produce judgements that can be considered as errors in judgement. This claim is supported by a novel method for assessing the quality of similarity and distance functions, which is based on relative scale of similarity with respect to chosen reference objects. The method may be applied in any domain, and is demonstrated for common measures of structural similarity in graphs. Finally, the paper identifies three distinct kinds of relative similarity judgement errors, and shows how the distribution of these errors is related to graph properties under common similarity measures.
机译:相似性或距离测度是否曾经出错?相似性识别中固有的主观性长期以来一直支持这样一种观点,即所有相似性判断均同等有效,并且任何选定的相似性度量只能在某些选定的领域中被认为更有效。本文提供的证据表明,这种观点对于结构相似性比较是不正确的。相似度和距离度量偶尔会出错,并且会产生可被视为判断错误的判断。该主张得到了一种用于评估相似性和距离函数质量的新颖方法的支持,该方法基于相对于所选参考对象的相似性相对尺度。该方法可应用于任何领域,并已证明可用于图形中结构相似的通用度量。最后,本文确定了三种不同的相对相似性判断错误,并说明了在常见相似性度量下这些错误的分布与图属性之间的关系。

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