Support Vector Data Descriptions and k-Means Clustering: One Class?

IEEE Transactions on Neural Networks and Learning Systems(2018)

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摘要
We present ClusterSVDD, a methodology that unifies support vector data descriptions (SVDDs) and k-means clustering into a single formulation. This allows both methods to benefit from one another, i.e., by adding flexibility using multiple spheres for SVDDs and increasing anomaly resistance and flexibility through kernels to k-means. In particular, our approach leads to a new interpretation of k-me...
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关键词
Kernel,Support vector machines,Level set,Optimization,Anomaly detection,Learning systems,Clustering algorithms
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