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Cautious relational clustering: A thresholding approach

机译:谨慎的关系聚类:阈值方法

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摘要

We propose in this article a new relational clustering method that can return a partial answer (i.e., a set of clusterings) in some cases. Starting from relational or similarity data, we determine a partial equivalence relation defined on the set of objects (two objects are linked if they belong to the same cluster): the key idea is to allow the method to abstain on some pairwise links because they cannot be determined with enough certainty from the data. This cautious equivalence relation represents a set of possible hard clusterings which can be obtained by completing the partial relation. This formalization makes it possible to easily detect ambiguous links and to identify subsets of objects with uncertain relationship. We illustrate the potential interest of our approach as a tool for exploratory data analysis of synthetic and real data sets. (C) 2019 Elsevier Ltd. All rights reserved.
机译:我们在本文中提出了一种新的关系聚类方法,该方法在某些情况下可以返回部分答案(即一组聚类)。从关系或相似性数据开始,我们确定在对象集上定义的部分等价关系(如果两个对象属于同一簇,则将两个对象链接在一起):关键思想是允许该方法在某些成对链接中放弃,因为它们不能从数据中足够确定。这种谨慎的等价关系表示可以通过完成部分关系而获得的一组可能的硬聚类。这种形式化使得可以容易地检测到模棱两可的链接并识别具有不确定关系的对象子集。我们说明了这种方法作为合成和真实数据集探索性数据分析工具的潜在利益。 (C)2019 Elsevier Ltd.保留所有权利。

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