Hashtag Discernability - Competitiveness Study of Graph Spectral and Other Clustering Methods.
FedCSIS(2023)
摘要
Spectral clustering methods are claimed to possess ability to represent clusters of diverse shapes, densities etc. They constitute an approximation to graph cuts of various types (plain cuts, normalized cuts, ratio cuts). They are applicable to unweighted and weighted similarity graphs. We perform an evaluation of these capabilities for clustering tasks of increasing complexity.
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关键词
hashtag discernability,other clustering methods,graph spectral,competitiveness study
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