2018
DOI: 10.48550/arxiv.1807.07619
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Generalized Metric Repair on Graphs

Abstract: Many modern data analysis algorithms either assume that or are considerably more efficient if the distances between the data points satisfy a metric. These algorithms include metric learning, clustering, and dimensionality reduction. Because real data sets are noisy, the similarity measures often fail to satisfy a metric. For this reason, Gilbert and Jain [11] and Fan, et al. [8] introduce the closely related problems of sparse metric repair and metric violation distance. The goal of each problem is to repair… Show more

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