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Tag-topic model for semantic knowledge acquisition from blogs

机译:从博客获取语义知识的标签主题模型

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摘要

This paper proposed a tag-topic model for semantic knowledge acquisition from blogs. The model extends the Latent Dirichlet Allocation by adding a tag layer between the document and topic layer, it represents each document with a mixture of tags, each tag is associated with a multinomial distribution over topics and each topic is associated with a multinomial distribution over words. After parameters estimating, the tags are regarded as concepts, the top words arranged to the top topics are selected as related words of the concepts, and PMI-IR is utilized for filtering out noisy words to improve the quality of the semantic knowledge. Experimental results show that the tag-topic model can effectively capture semantic knowledge.
机译:本文提出了一种从博客获取语义知识的标签主题模型。该模型通过在文档和主题层之间添加标签层来扩展Latent Dirichlet分配,它通过标签的混合物表示每个文档,每个标签与主题上的多项式分布相关,每个主题与单词上的多项式分布相关。在参数估计后,将标签视为概念,将排列在主题上的主题词选作概念的相关词,并利用PMI-IR过滤掉嘈杂的词,以提高语义知识的质量。实验结果表明,标签主题模型可以有效地捕获语义知识。

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