M. Delgado, M. Dolores Ruiz, D. Sánchez, J. Serrano
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A Fuzzy Rule Mining Approach involving Absent Items
In this paper we present how to extract fuzzy association rules involving both the presence and the absence of items using a fuzzy rule mining procedure introduced by the authors in previous works. The rule mining procedure is based on the GUHA logical model, fuzzified via a recently proposed representation of gradualness. We present some results obtained with real datasets.