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Searching Questions by Identifying Question Topic and Question Focus

机译:通过识别问题主题和问题焦点来搜索问题

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This paper is concerned with the problem of question search. In question search, given a question as query, we are to return questions semantically equivalent or close to the queried question. In this paper, we propose to conduct question search by identifying question topic and question focus. More specifically, we first summarize questions in a data structure consisting of question topic and question focus. Then we model question topic and question focus in a language modeling framework for search. We also propose to use the MDL-based tree cut model for identifying question topic and question focus automatically. Experimental results indicate that our approach of identifying question topic and question focus for search significantly outperforms the baseline methods such as Vector Space Model (VSM) and Language Model for Information Retrieval (LMIR).
机译:本文涉及问题搜索的问题。在问题搜索中,给定一个问题作为查询,我们将返回语义上相等或接近于所查询问题的问题。在本文中,我们建议通过确定问题主题和问题重点来进行问题搜索。更具体地说,我们首先在包含问题主题和问题重点的数据结构中总结问题。然后,我们在用于搜索的语言建模框架中对问题主题和问题焦点进行建模。我们还建议使用基于MDL的切树模型来自动识别问题主题和问题焦点。实验结果表明,我们识别搜索的问题主题和问题重点的方法明显优于基线方法,例如向量空间模型(VSM)和信息检索语言模型(LMIR)。

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