Efficient inference models for classification problems with a high number of fuzzy rules
Metadatos
Mostrar el registro completo del ítemAutor
Jara, Leonardo; Ariza-Valderrama, Rubén; Fernández Olivares, Juan; González Muñoz, Antonio; Pérez Rodríguez, Francisco G.RaúlEditorial
Elsevier
Materia
big data Explainable AI Fuzzy reasoning Linguistic Fuzzy Rule-Based Classification Systems Inference engine Soft Computing
Fecha
2022-01-15Referencia bibliográfica
Jara L., Ariza-Valderrama R., Fernández-Olivares J., González A., Pérez R., Efficient inference models for classification problems with a high number of fuzzy rules, (2022) Applied Soft Computing, 115, art. no. 108164
Patrocinador
Ministerio de Economia, Comercio y Empresa [RTI2018-09846-B-I00]; Junta de Andalucía, Proyecto B-TIC-668-UGR 20; Fondos FEDER de la Unión EuropeaResumen
In data science there are problems that are not visible until you work with a sufficiently large number of data. This is the case, for example, with the design of the inference engine in fuzzy rule-based classification systems. The most common way to implement the winning rule inference method is to use sequential processing that reviews each of the rules in the rule set, to determine the best one and return the associated class. This implementation produces fast response times when the set of rules is small and is applied to a small set of examples. In this paper we explore new versions to implement this inference method, avoiding analyzing all the rules and focusing the analysis on the neighborhood of rules around the example. We study experimentally the conditions where each of them should be applied. Finally, we propose an implementation that combines all the studied versions offering good accuracy results and a significant reduction in the response time





