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Título
Robust Approaches for Fuzzy Clusterwise Regression Based on Trimming and Constraints
Año del Documento
2018
Editorial
Springer International Publishing
Documento Fuente
García-Escudero L.A., Gordaliza A., Greselin F., Mayo-Iscar A. (2018) Robust Approaches for Fuzzy Clusterwise Regression Based on Trimming and Constraints. In: Gil E., Gil E., Gil J., Gil M. (eds) The Mathematics of the Uncertain. Studies in Systems, Decision and Control, vol 142.
Resumo
Three different approaches for robust fuzzy clusterwise regression are reviewed. They are all based on the simultaneous application of trimming and constraints. The first one follows from the joint modeling of the response and explanatory variables through a normal component fitted in each cluster. The second one assumes normally distributed error terms conditional on the explanatory variables while the third approach is an extension of the Cluster Weighted Model. A fixed proportion of “most outlying” observations are trimmed. The use of appropriate constraints turns these problem into mathematically well-defined ones and, additionally, serves to avoid the detection of non-interesting or “spurious” linear clusters. The third proposal is specially appealing because it is able to protect us against outliers in the explanatory variables which may act as “bad leverage” points. Feasible and practical algorithms are outlined. Their performances, in terms of robustness, are illustrated in some simple simulated examples.
Patrocinador
Spanish Ministerio de Economía y Competitividad, grant MTM2017-86061-C2-1-P, and by Consejería de Educación de la Junta de Castilla y León and FEDER, grant VA005P17 and VA002G18.
Idioma
spa
Tipo de versión
info:eu-repo/semantics/draft
Derechos
openAccess
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