A Semi-Supervised Adaptive Discriminative Discretization Method Improving Discrimination Power of Regularized Naive Bayes

33 Pages Posted: 19 Nov 2022

See all articles by Shihe Wang

Shihe Wang

affiliation not provided to SSRN

Jianfeng Ren

University of Nottingham, Ningbo - University of Nottingham Ningbo China

Ruibin Bai

University of Nottingham, Ningbo - University of Nottingham Ningbo China

Abstract

Recently, many improved naive Bayes methods have been developed with enhanced discrimination capabilities. Among them, regularized naive Bayes (RNB) produces excellent performance by balancing the discrimination power and generalization capability. Data discretization is important in naive Bayes. By grouping similar values into one interval, the data distribution could be better estimated. However, existing methods including RNB often discretize the data into too few intervals, which may result in a significant information loss. To address this problem, we propose a semi-supervised adaptive discriminative discretization framework for naive Bayes, which could better estimate the data distribution by utilizing both labeled data and unlabeled data through pseudo-labeling techniques. The proposed method also significantly reduces the information loss during discretization by utilizing an adaptive discriminative discretization scheme, and hence greatly improves the discrimination power of classifiers. The proposed RNB+, i.e., regularized naive Bayes utilizing the proposed discretization framework, is systematically evaluated on a wide range of machine-learning datasets. It significantly and consistently outperforms state-of-the-art NB classifiers.

Keywords: Naive Bayes Classifier, Semi-Supervised Discretization, Attribute Weighting, Adaptive Discriminative Discretization

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Suggested Citation

Wang, Shihe and Ren, Jianfeng and Bai, Ruibin, A Semi-Supervised Adaptive Discriminative Discretization Method Improving Discrimination Power of Regularized Naive Bayes. Available at SSRN: https://ssrn.com/abstract=4281601 or http://dx.doi.org/10.2139/ssrn.4281601

Shihe Wang

affiliation not provided to SSRN ( email )

No Address Available

Jianfeng Ren (Contact Author)

University of Nottingham, Ningbo - University of Nottingham Ningbo China ( email )

Ruibin Bai

University of Nottingham, Ningbo - University of Nottingham Ningbo China ( email )

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