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<i>k</i>-means–: A unified approach to clustering and outlier detection
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2013
Year
Unknown Venue
Cluster ComputingAnomaly DetectionMachine LearningEngineeringK-means ProblemNetwork AnalysisUnsupervised Machine LearningBregman DivergenceData ScienceData MiningPattern RecognitionStatisticsClustering (Nuclear Physics)Intrusion Detection SystemOutlier DetectionKnowledge DiscoveryComputer ScienceUnified ApproachNovelty DetectionClustering (Data Mining)
We present a unified approach for simultaneously clustering and discovering outliers in data. Our approach is formalized as a generalization of the k-MEANS problem. We prove that the problem is NP-hard and then present a practical polynomial time algorithm, which is guaranteed to converge to a local optimum. Furthermore we extend our approach to all distance measures that can be expressed in the form of a Bregman divergence. Experiments on synthetic and real datasets demonstrate the effectiveness of our approach and the utility of carrying out both clustering and outlier detection in a concurrent manner. In particular on the famous KDD cup network-intrusion dataset, we were able to increase the precision of the outlier detection task by nearly 100% compared to the classical nearest-neighbor approach.