Automated feature weighting in naive bayes for high-dimensional data classification

Lifei Chen, Shengrui Wang
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引用次数: 29

Abstract

Naive Bayes (NB for short) is one of the popular methods for supervised classification in a knowledge management system. Currently, in many real-world applications, high-dimensional data pose a major challenge to conventional NB classifiers, due to noisy or redundant features and local relevance of these features to classes. In this paper, an automated feature weighting solution is proposed to result in a NB method effective in dealing with high-dimensional data. We first propose a locally weighted probability model, for Bayesian modeling in high-dimensional spaces, to implement a soft feature selection scheme. Then we propose an optimization algorithm to find the weights in linear time complexity, based on the Logitnormal priori distribution and the Maximum a Posteriori principle. Experimental studies show the effectiveness and suitability of the proposed model for high-dimensional data classification.
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用于高维数据分类的朴素贝叶斯特征自动加权
朴素贝叶斯(Naive Bayes,简称NB)是知识管理系统中常用的监督分类方法之一。目前,在许多现实世界的应用中,由于噪声或冗余的特征以及这些特征与类的局部相关性,高维数据对传统的NB分类器构成了重大挑战。本文提出了一种自动特征加权解决方案,使NB方法能够有效地处理高维数据。我们首先提出了一个局部加权概率模型,用于高维空间的贝叶斯建模,以实现软特征选择方案。然后,我们提出了一种基于对数正态先验分布和极大后验原理的线性时间复杂度权重优化算法。实验研究表明了该模型对高维数据分类的有效性和适用性。
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