2017
DOI: 10.1007/978-3-319-57240-6_17
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Watersheds on Hypergraphs for Data Clustering

Abstract: Abstract. We present a novel extension of watershed cuts to hypergraphs, allowing the clustering of data represented as an hypergraph, in the context of data sciences. Contrarily to the methods in the literature, instances of data are not represented as nodes, but as edges of the hypergraph. The properties associated with each instance are used to define nodes and feature vectors associated to the edges. This rich representation is unexplored and leads to a data clustering algorithm that considers the induced … Show more

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