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A hybrid recommendation system for Q&A documents

机译:Q&A文件的混合推荐系统

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Question and answer (Q&A) documents are a new type of knowledge document composed of a question part and an answer part. The questions represent knowledge needs, and the answers contain the knowledge that meets these knowledge needs. An overload of accumulated Q&A documents decreases the reuse of valuable knowledge. In this paper, we propose a novel hybrid system to recommend Q&A documents to alleviate overload. First, knowledge needs are partitioned, and current knowledge needs are identified by sequentially clustering the Q&A documents. Second, a content-based (CB) recommendation method, a collaborative filtering (CF) recommendation method and a complementarity-based recommendation method are used to find the Q&A documents that are potentially helpful for the user. Third, the three initial recommendation lists of Q&A documents derived from the three recommendation methods are combined to form a more comprehensive recommendation based on the Fermat point. Because reading all Q&A documents in the recommendation list consumes an enormous amount of time and users prefer to read Q&A documents one by one starting from the top, a novel ranking mechanism is proposed to ensure that users obtain comprehensive knowledge to the greatest extent possible from the limited number of Q&A documents at the top of the list. The proposed approach is evaluated and compared based on an experimental dataset. Our experimental results show that the approach is feasible, performs well, and provides a more effective way to recommend Q&A documents. (C) 2019 Elsevier Ltd. All rights reserved.
机译:问答(Q&A)文件是由问题部分和答案部分组成的新型知识文件。问题代表了知识需求,答案包含符合这些知识需求的知识。累积的问答文件过载降低了有价值知识的重用。在本文中,我们提出了一种新的混合系统,推荐Q&A文件来缓解过载。首先,通过顺序培养Q&A文档来识别知识需求。其次,基于内容的(CB)推荐方法,协作滤波(CF)推荐方法和基于互补的推荐方法用于找到对用户有用的Q&A文档。第三,Q&A来自三项推荐方法的三个初始推荐列表组合以基于Fermat Point形成更全面的建议。因为在推荐列表中读取所有问答文件,消耗大量的时间,用户更喜欢从顶部开始读取问答文件,提出了一种新的排名机制,以确保用户在最大程度上获得全面的知识列表顶部的有限数量的问答文件。基于实验数据集进行评估和比较所提出的方法。我们的实验结果表明,该方法是可行的,表现良好,并提供了更有效的方法来推荐Q&A文件。 (c)2019 Elsevier Ltd.保留所有权利。

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