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Diversifying Question Recommendations in Community-Based Question Answering

机译:基于社区的问答中的多样化建议

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摘要

Question retrieval is an important research topic in community-based question answering (QA). Conventionally, questions semantically equivalent to the query question are considered as top ranks. However, traditional question retrieval technique has the difficulty to process the users' information needs which are implicitly embedded in the question. This paper proposes a novel method of question recommendation by considering user's diverse information needs. By estimating information need compactness in the question retrieval results, we further identify the retrieval results need to be diversified. For these results, the scores of information retrieval model, the importance and novelty of both question types and the informational aspects of question content, are combined to do diverse question recommendation. Comparative experiments on a large scale real community-based QA dataset show that the proposed method effectively improves information need coverage and diversity through relevant questions recommendation.
机译:问题检索是基于社区的问题解答(QA)中的重要研究主题。按照惯例,在语义上等同于查询问题的问题被认为是排名最高的。但是,传统的问题检索技术难以处理隐含在问题中的用户信息需求。通过考虑用户的多样化信息需求,提出了一种新的问题推荐方法。通过估计问题检索结果中的信息需求紧凑度,我们进一步确定了需要多样化的检索结果。对于这些结果,将信息检索模型的得分,问题类型的重要性和新颖性以及问题内容的信息方面相结合,以进行不同的问题推荐。在大规模的基于真实社区的质量保证数据集上的比较实验表明,该方法通过相关问题的推荐有效地提高了信息需求的覆盖率和多样性。

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