An application of Non-Parametric Predictive Inference on multi-class classification high-level-noise problems

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摘要

This paper presents an application of the Non-parametric Predictive Inference model for multinomial data (NPIM) on multiclass classification noise tasks, i.e. classification tasks where the variable under study has 3 or more possible states or values; and the data sets have incorrect class labels in their training and/or test data sets. In an experimental study, we show that the combination or fusion of the information obtained from decision trees built using the NPIM in a Bagging scheme, can improve the process of classification in multi-class classification noise problems. Via a set of statistical tests, we compared this approach with other successful methods used in similar scheme, on a wide set of data sets. It must be remarked that the new approach has a notably performance, compared with the rest of models, when the level of noise is increased.

论文关键词:Imprecise probabilities,Imprecise Dirichlet model,Non-Parametric Predictive Inference,Information based uncertainty measures,Ensemble decision trees,Classification noise

论文评审过程:Available online 18 February 2013.

论文官网地址:https://doi.org/10.1016/j.eswa.2013.01.066