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How Much True Structure Has Been Discovered? Validating Explorative Clustering on a Hold-Out Test Set

机译:发现了多少真实结构?在保持测试集上验证探索性聚类

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Comparing clustering algorithms is much more difficult than comparing classification algorithms, which is due to the unsupervised nature of the task and the lack of a precisely stated objective. We consider explorative cluster analysis as a predictive task (predict regions where data lumps together) and propose a measure to evaluate the performance on an hold-out test set. The performance is discussed for typical situations and results on artificial and real world datasets are presented for partitional, hierarchical, and density-based clustering algorithms. The proposed S-measure successfully senses the individual strengths and weaknesses of each algorithm.
机译:比较聚类算法比比较分类算法要困难得多,这是由于任务的无监督性质以及缺少精确说明的目标。我们将探索性聚类分析视为一项预测任务(预测数据会聚集在一起的区域),并提出一种措施来评估保留测试集上的性能。针对典型情况讨论了性能,并针对分区,分层和基于密度的聚类算法提供了人工和真实世界数据集的结果。所提出的S度量成功地感知了每种算法的优点和缺点。

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