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A Similarity Measure Based on Bidirectional Subsethood for Intervals

机译:基于双向额外的间隔的相似度量

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With a growing number of areas leveraging intervalvalued data-including in the context of modeling human uncertainty (e.g., in cybersecurity), the capacity to accurately and systematically compare intervals for reasoning and computation is increasingly important. In practice, well established set-theoretic similarity measures, such as the Jaccard and Sorensen-Dice measures, are commonly used, whereas axiomatically, a wide breadth of possible measures have been theoretically explored. This article identifies, articulates, and addresses an inherent and so far not discussed limitation of popular measures-their tendency to be subject to aliasing-where they return the same similarity value for very different sets of intervals. The latter risks counter-intuitive results and poor-automated reasoning in real-world applications dependent on systematically comparing interval-valued system variables or states. Given this, we introduce new axioms establishing desirable properties for robust similarity measures, followed by putting forward a novel set-theoretic similarity measure based on the concept of bidirectional subsethood, which satisfies both traditional and new axioms. The proposed measure is designed to be sensitive to the variation in the size of intervals, thus avoiding aliasing. This article provides a detailed theoretical exploration of the new proposed measure, and systematically demonstrates its behavior using an extensive set of synthetic and real-world data. Specifically, the measure is shown to return robust outputs that follow intuition-essential for real-world applications. For example, we showthat it is bounded above and belowby the Jaccard and Sorensen-Dice similarity measures (when the minimum t-norm is used). Finally, we show that a dissimilarity or distance measure, which satisfies the properties of a metric, can easily be derived from the proposed similarity measure.
机译:利用越来越多的区域利用intervaluted数据 - 包括在建模人类不确定性(例如,在网络安全)的背景下,准确和系统地比较推理和计算间隔的能力越来越重要。在实践中,常用的既有设定的设法相似度措施,例如jaccard和索硒骰措施,而理论上探索过广泛的可能措施宽阔。本文识别,阐明和解决内部,迄今未讨论对流行措施的限制 - 他们受到别名的倾向 - 在那里它们返回相同的相似值以获得非常不同的间隔集。后一种风险依赖于系统地比较间隔值系统变量或状态的实际应用中的反直观的结果和自动化推理。鉴于这一点,我们引入了建立鲁棒相似度措施的理想性质的新公理,然后基于双向概念的概念提出了一种基于双向概念的新型设法相似度,这满足了传统和新的公理。所提出的措施旨在对间隔尺寸的变化敏感,从而避免锯齿。本文提供了对新拟议措施的详细理论探索,并系统地展示了使用广泛的合成和现实世界数据的行为。具体而言,该度量被示出为返回遵循Intuition-Essential的强大输出,以实现真实的应用程序。例如,我们展示它以上偏移,jaccard和sorensen-dice相似度测量(当使用最小t-norm时)。最后,我们表明,满足度量特性的不相似性或距离测量,可以容易地从所提出的相似度测量得出。

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