Pełka, Marcin
January 2013
Research Papers of the Wroclaw University of Economics / Prace N;2013, Issue 278, p282
Academic Journal
The main aim of the paper is to present a proposal of new fuzzy clustering method for symbolic interval-valued data. The paper presents basic terms of symbolic data, spectral clustering and fuzzy c-means clustering. In the empirical part results of simulation study with application of artificial data sets obtained from R software are presented.


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