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The Positive Matching Index: A new similarity measure with optimal characteristics

机译:正匹配指数:具有最佳特性的新相似性度量

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Despite the many coefficients accounting for the resemblance between pairs of objects based on presence/absence data, no one measure shows optimal characteristics. In this work the Positive Matching Index (PM1) is proposed as a new measure of similarity between lists of attributes. PMI fulfills the Tulloss' theoretical prerequisites for similarity coefficients, is easy to calculate and has an intrinsic meaning expressable into a natural language. PMI is bounded between 0 and 1 and represents the mean proportion of positive matches relative to the size of attribute lists, ranging this cardinality continuously from the smaller list to the larger one. PMI behaves correctly where alternative indices either fail, or only approximate to the desirable properties for a similarity index. Empirical examples associated to biomedical research are provided to show outperformance of PMI in relation to standard indices such as Jaccard and Dice coefficients.
机译:尽管基于存在/不存在数据有许多系数解释了成对的对象之间的相似性,但是没有一种度量能够显示出最佳特性。在这项工作中,提出了“积极匹配指数”(PM1)作为属性列表之间相似性的新度量。 PMI满足了Tulloss关于相似系数的理论前提,易于计算,并且具有可表达为自然语言的内在含义。 PMI介于0和1之间,代表相对于属性列表大小的正匹配的平均比例,该基数从较小的列表到较大的列表连续不断地变化。在替代索引失败或仅近似于相似性索引所需属性的情况下,PMI可以正确运行。提供了与生物医学研究相关的经验示例,以显示PMI相对于Jaccard和Dice系数等标准指数的表现。

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