半监督贝叶斯方法在分类器设计中的应用

Yiqing Kong, Shitong Wang
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摘要

本文采用贝叶斯方法学习与半监督问题分类任务相关的最优非线性分类器。该方法使用先验权重来强调类的重要性,它作为标记和未标记数据的似然函数的参数。我们推导了一种期望最大化算法来计算最大似然点估计。实验结果表明,无论是在合成数据集还是在基准数据集上,分类精度都是合适的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying the Semisupervised Bayesian Approach to Classifier Design
This paper adopts a Bayesian approach to learn an optimal nonlinear classifier that is relevant to the classification task of semisupervised problems. The approach uses a prior weight to emphasize on the importance of class, which acts as a parameter of the likelihood function for both labeled and unlabeled data. We derive an expectation-maximization (EM) algorithm to compute maximum likelihood point estimate. Experimental results demonstrate appropriate classification accuracy on both synthetic and benchmark data sets
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