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A Selective Naive Bayesian Classification Algorithm Based on Rough Set

机译:基于粗糙集的一种选择性天真贝叶斯分类算法

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Naive Bayesian classifier (NBC) is a simple and effective classification model, but its condition independence assumption is often violated in reality and makes it perform poorly. In our study, we attempt to improve the NBC model through the way of attribute selection based on rough set. The main idea of the improvement model is to select a closest approximate independent attributes subset and relax the assumption of independence. Through the experimental comparison and analysis on the UCI datasets, the model is proved effective.
机译:天真的贝叶斯分类器(NBC)是一种简单有效的分类模型,但其条件独立假设通常违反现实,并使它表现不佳。在我们的研究中,我们试图通过基于粗糙集的属性选择方式改进NBC模型。改进模型的主要思想是选择最接近的近似独立属性子集,并放松独立的假设。通过对UCI数据集的实验比较和分析,证明了型号有效。

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