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Formulation of a hybrid expertise retrieval system in community question answering services

机译:在社区问题回答服务中制定混合专业知识检索系统

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摘要

In this paper, we propose a hybrid expertise retrieval system for community question answering services. The proposed system consists of two segments: a text based segment and a network based segment. For a given question, the text based segment estimates users' knowledge introducing two new concepts: question hardness and question answerer association. The network based segment, moreover, incorporates users' relative performances into the network structure. We denote the outputs of these two segments as knowledge score and authority score, respectively. We aggregate these two scores using a fusion technique to quantify the expertise of a given user for a given question. We have generated four datasets by downloading questions and answers from Yahoo! Answers. The performance of the proposed system is found to be superior than that of 18 state-of-the-art algorithms on these four real-world datasets.
机译:在本文中,我们提出了一个用于社区问题回答服务的混合专长检索系统。 建议的系统由两个段组成:基于文本的段和基于网络的段。 对于给定的问题,基于文本的段估计用户的知识引入了两个新概念:问题硬度和问题应答协会。 此外,基于网络的段将用户的相对性能结合到网络结构中。 我们将这两个段的产出分别表示为知识分数和权限分数。 我们使用融合技术聚合这两个分数来量化给定问题的给定用户的专业知识。 通过从Yahoo!下载问题和解答,我们生成了四个数据集 答案。 发现所提出的系统的性能优于这四个现实世界数据集的18个最先进的算法。

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