The Wilkie, Stonham, and Aleksander recognition device (WiSARD) [Formula: see text]-tuple classifier is a multiclass weightless neural network capable of learning a given pattern in a single step. Its architecture is determined by the number of classes it should discriminate. A target class is represented by a structure called a discriminator, which is composed of [Formula: see text] RAM nodes, each of them addressed by an [Formula: see text]-tuple. Previous studies were carried out in order to mitigate an important problem of the WiSARD [Formula: see text]-tuple classifier: having its RAM nodes saturated when trained by a large data set. Finding the VC dimension of the WiSARD [Formula: see text]-tuple classifier was one of those studies. Although no exact value was found, tight bounds were discovered. Later, the bleaching technique was proposed as a means to avoid saturation. Recent empirical results with the bleaching extension showed that the WiSARD [Formula: see text]-tuple classifier can achieve high accuracies with low variance in a great range of tasks. Theoretical studies had not been conducted with that extension previously. This work presents the exact VC dimension of the basic two-class WiSARD [Formula: see text]-tuple classifier, which is linearly proportional to the number of RAM nodes belonging to a discriminator, and exponentially to their addressing tuple length, precisely [Formula: see text]. The exact VC dimension of the bleaching extension to the WiSARD [Formula: see text]-tuple classifier, whose value is the same as that of the basic model, is also produced. Such a result confirms that the bleaching technique is indeed an enhancement to the basic WiSARD [Formula: see text]-tuple classifier as it does no harm to the generalization capability of the original paradigm.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.