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Text Classification Based on a Novel Bayesian Hierarchical Model

机译:基于新型贝叶斯等级模型的文本分类

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In the text literature, many Bayesian generative models were                                                                                                                                                                           proposed to represent documents and words in order to process text effectively and accurately. As the most popular one of these models, Latent Dirichlet Allocation Model(LDA) did great job in dimensionality reduction for document classification. In this paper, inspiring by Latent Dirichlet Allocation Model, we propose LDCM or Latent Dirichlet Category Model for text classification rather than dimensionality reduction. LDCM estimate parameters of models by variational inference and use variational parameters to estimate maximum a posteriori of terms. As demonstrated - - by our experimental results, we report satisfactory categorization performances aboutour method on various real-world text documents.
机译:在文本文献中,提出了许多贝叶斯生成模型来表示文档和单词,以便有效准确地处理文本。作为这些模型中最受欢迎的一个,潜在的Dirichlet分配模型(LDA)对文档分类的维度减少了很大的工作。在本文中,通过潜在的Dirichlet分配模型鼓励,我们提出了文本分类而不是维数减少的LDCM或潜在的Dirichlet类别模型。通过变分推理的LDCM估计模型的参数,并使用变分参数来估计最大的术语后部。如我们实验结果所示,我们在各种真实世界文本文件中报告了对Our方法的令人满意的分类表演。

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