“…Ensembles increase the classification performance because they can reduce the variance (Breiman, ) and the effect of individual classifiers' bias (Rokach, ). Different classifiers in the ensemble are usually created by using a different selection of objects, as is the case of Valentini and Dietterich's multiple ocSVM classifiers (Valentini & Dietterich, ), structured one‐class classification (Wang et al, ; Sharma et al, ), Bagging‐TPMiner (Medina‐Pérez et al, ), and Giacinto et al's modular ensemble (Giacinto et al, , ). Another popular alternative is to create the classifiers in the ensemble by using a different selection of attributes, for example, one attribute per classifier (Juszczak & Duin, ) or subsets of original or derived attributes (Nanni, ; Biggio et al, ; Cheplygina & Tax, ; Krawczyk, ; Rodríguez et al, ; Tax & Duin, ).…”