FSSD - A Fast and Efficient Algorithm for Subgroup Set Discovery

Adnene Belfodil, Aimene Belfodil, Anes Bendimerad, Philippe Lamarre, C. Robardet, Mehdi Kaytoue-Uberall, M. Plantevit
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引用次数: 16

Abstract

Subgroup discovery (SD) is the task of discovering interpretable patterns in the data that stand out w.r.t. some property of interest. Discovering patterns that accurately discriminate a class from the others is one of the most common SD tasks. Standard approaches of the literature are based on local pattern discovery, which is known to provide an overwhelmingly large number of redundant patterns. To solve this issue, pattern set mining has been proposed: instead of evaluating the quality of patterns separately, one should consider the quality of a pattern set as a whole. The goal is to provide a small pattern set that is diverse and well-discriminant to~the target class. In this work, we introduce a novel formulation of the task of diverse subgroup set discovery where both discriminative power and diversity of the subgroup set are incorporated in the same quality measure. We propose an efficient and parameter-free algorithm dubbed FSSD and based on a greedy scheme. FSSD uses several optimization strategies that enable to efficiently provide a high quality pattern set in a short amount of time.
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FSSD - 用于发现子群集的快速高效算法
子群发现(SD)是在数据中发现可解释的模式的任务,这些模式在某些感兴趣的属性方面非常突出。发现能准确区分一个类别和其他类别的模式是最常见的子群发现任务之一。文献中的标准方法都是基于局部模式发现,众所周知,这种方法会提供大量冗余模式。为了解决这个问题,有人提出了模式集挖掘法:与其分别评估模式的质量,不如从整体上考虑模式集的质量。这样做的目的是提供一个小的模式集,该模式集具有多样性,并且对目标类别有很好的区分度。在这项工作中,我们对发现多样化子群集的任务提出了一种新的表述,即子群集的判别力和多样性都被纳入同一个质量度量中。我们提出了一种基于贪婪方案的高效、无参数算法,称为 FSSD。FSSD 采用多种优化策略,能在短时间内有效地提供高质量的模式集。
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