Autor(es): Suleman, A.
Data: 2017
Origem: Repositório ISCTE
Assunto(s): Fuzzy clustering; Archetypal analysis; Validation index
Autor(es): Suleman, A.
Data: 2017
Origem: Repositório ISCTE
Assunto(s): Fuzzy clustering; Archetypal analysis; Validation index
We use an information-theoretic criterion to assess the goodness-of-fit of the output of archetypal analysis (AA), also intended as a fuzzy clustering tool. It is an adaptation of an existing AIC-like measure to the specifics of AA. We test its effectiveness using artificial data and some data sets arising from real life problems. In most cases, the results achieved are similar to those provided by an external similarity index. The average reconstruction accuracy is about 93%.