Optimizing Knowledge Graphs through Voting-based User Feedback

Ruida Yang, Xin Lin, Jianliang Xu, Yan Yang, Liang He
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Abstract

Knowledge graphs have been used in a wide range of applications to support search, recommendation, and question answering (Q&A). For example, in Q&A systems, given a new question, we may use a knowledge graph to automatically identify the most suitable answers based on similarity evaluation. However, such systems may suffer from two major limitations. First, the knowledge graph constructed based on source data may contain errors. Second, the knowledge graph may become out of date and cannot quickly adapt to new knowledge. To address these issues, in this paper, we propose an interactive framework that refines and optimizes knowledge graphs through user votes. We develop an efficient similarity evaluation notion, called extended inverse P-distance, based on which the graph optimization problem can be formulated as a signomial geometric programming problem. We then propose a basic single-vote solution and a more advanced multi-vote solution for graph optimization. We also propose a split-and-merge optimization strategy to scale up the multi-vote solution. Extensive experiments based on real-life and synthetic graphs demonstrate the effectiveness and efficiency of our proposed framework.
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通过基于投票的用户反馈优化知识图谱
知识图谱已被广泛应用于支持搜索、推荐和问答(Q&A)的应用中。例如,在问答系统中,给定一个新问题,我们可以使用知识图来基于相似性评估自动识别最合适的答案。然而,这种系统可能受到两个主要限制。首先,基于源数据构建的知识图可能存在错误。其次,知识图谱可能会过时,无法快速适应新知识。为了解决这些问题,在本文中,我们提出了一个交互式框架,通过用户投票来细化和优化知识图谱。我们提出了一种有效的相似性评价概念,称为扩展逆p距离,在此基础上,图优化问题可以表述为一个符号几何规划问题。然后,我们提出了一个基本的单投票解决方案和一个更高级的多投票解决方案的图优化。我们还提出了一种分裂合并优化策略来扩大多投票解决方案的规模。基于现实生活和合成图的大量实验证明了我们提出的框架的有效性和效率。
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