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Multinomial Naive Bayes using similarity based conditional probability

机译:使用基于相似性的条件概率的多项式朴素贝叶斯

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摘要

The exponential growth of Internet through sharing text content necessitates the analysis to convert them into useful information. The research areas such as Web mining, Opinion mining and Text mining focus on studies namely content mining, statistical analysis, prediction, and classification. Multinomial Naive Bayes (MNB), the state of art of Bayesian classifier is the fastest and simplest text classifier. The objective of the proposed study is to enhance the classification by substituting the conditional probability of existing MNB with probability based frequency computation. A new combination that consists of Pointwise Mutual Information (PMI) and different normalized Term Frequency (TF) is used for computing the conditional probability. The new combinations provide weight to the words based on the information gain carried by the words related to the document that belongs to a class. The robustness of Similarity based Enhanced Conditional Probability MNB (SECP-MNB) is reflected in classification accuracy measurement.
机译:互联网通过共享文本内容的指数增长需要分析将它们转换为有用的信息。研究领域,如网络挖掘,意见采矿和文本挖掘专注于研究内容挖掘,统计分析,预测和分类。多项式天真贝叶斯(MNB),贝叶斯分类器的艺术状态是最快,最简单的文本分类器。拟议研究的目的是通过用基于概率的频率计算来提高现有MNB的条件概率来提高分类。由点互信息(PMI)和不同归一化术语频率(TF)组成的新组合用于计算条件概率。新组合根据与属于类的文档相关的单词携带的信息增益为单词提供权重。基于相似性的增强条件概率MNB(SECP-MNB)的鲁棒性反映在分类精度测量中。

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