2016
DOI: 10.1016/j.fss.2015.04.012
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Clustering and classification of fuzzy data using the fuzzy EM algorithm

Abstract: In this article, we address the problem of clustering imprecise data using a finite mixture of Gaussians. We propose to estimate the parameters of the model using the fuzzy EM algorithm. This extension of the EM algorithm allows us to handle imprecise data represented by fuzzy numbers. First, we briefly recall the principle of the fuzzy EM algorithm. Then, we provide closed-forms for the parameter estimates in the case of Gaussian fuzzy data. We also describe a Monte-Carlo procedure for estimating the paramete… Show more

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Cited by 40 publications
(30 citation statements)
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“…In Table III, the results of the proposed K-Means-Mod algorithm is compared against three other recent classification studies which are [11]- [13]. The three compared studies contain the accuracy performances achieved from fuzzy expectation maximisation and several modified KNN approaches, respectively.…”
Section: Resultsmentioning
confidence: 99%
See 2 more Smart Citations
“…In Table III, the results of the proposed K-Means-Mod algorithm is compared against three other recent classification studies which are [11]- [13]. The three compared studies contain the accuracy performances achieved from fuzzy expectation maximisation and several modified KNN approaches, respectively.…”
Section: Resultsmentioning
confidence: 99%
“…The study presented in [11] investigates the efficiency of Gaussian Mixture Models (GMM) and fuzzy Expectation Maximisation (EM). The technique proposed in [11] mainly focuses on clustering and classification of fuzzy data.…”
Section: Some Recent Literature On Classificationmentioning
confidence: 99%
See 1 more Smart Citation
“…They showed varying performance depending on the aspects of the model and the performance measure considered. The novelty of these tools, makes it difficult to compare to other existing tools that either do not consider point pattern process (Frame & Jammalamadaka, 2007; Frühwirth-Schnatter, 2006; Hui, 2016; Martinez, 2015; Melnykov & Maitra, 2010; Quost & Denœux, 2016), Poisson distributions (Figueirido & Jain, 2002; Hui et al , 2015; Scrucca et al , 2016; Woillez et al , 2012), count data (Benaglia et al , 2009; Iovleff, 2018; Leisch, 2004) or implementation of mixture (Witten, 2011; Wendel et al , 2015) or semi-supervised learning frameworks (Di Zio et al , 2007; Fraley & Raftery, 1998; Jeffries & Pfeiffer, 2001; Taddy & Kottas, 2012).…”
Section: Discussionmentioning
confidence: 99%
“…In conclusion, when using a hybrid approach (statistical modeling based on simultaneously exploratory and inferential tools), it could be particularly interesting to study exploratory multivariate methods for imprecise data in which inferential tools-such as likelihood function defined in a fuzzy framework, fuzzy extension of the EM algorithm or statistical test procedures-are considered (see, e.g., Colubi et al 2009;Quost and Denoeux 2016).…”
Section: Final Remarks and Future Perspectivesmentioning
confidence: 99%