Distribution-free performance bounds with the resubstitution error estimate
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2018, Computers and Industrial EngineeringCitation Excerpt :The confusion matrix utilised in the slope stability prediction is shown in Table 1. There are several validation methods of classification models, including simple substitution method, holdout method, bootstrap method, and bolstered method (Braga-Neto, Hashimoto, Dougherty, Nguyen, & Carroll, 2004; Efron & Tibshirani, 1993; Gascuel & Caraux, 1992; Rayens, 1993). One of these methods, and probably the most popular one, is k-fold cross validation (CV) (Stone, 1974).
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