Performance of using LDA for Chinese news text classification

2015 
Chinese text classification is always challenging, especially when data are high dimensional and sparse. In this paper, we are interested in the way of text representation and dimension reduction in Chinese text classification. First, we introduces a topic modelLatent Dirichlet Allocation(LDA), which is uses LDA model as a dimension reduction method. Second, we choose Support Vector Machine(SVM) as the classification algorithm. Next, a method of text classification based on LDA and SVM is described. Finally, we choose documents with large number of Chinese text for experiment. Compared with LDA method and the traditional TF∗IDF method, the experimental results show that LDA method runs a better results both on the classification accuracy and running time.
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