基于约束优化的专家匹配

Wenbin Tang, Jie Tang, Chenhao Tan
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引用次数: 61

摘要

专家匹配,旨在找到专家和查询之间的一致性,是许多实际应用程序中常见的问题,例如会议论文审稿人分配、产品审稿人一致性和产品背书者匹配。大多数现有的方法通常是通过使用信息检索等方法,为每个查询独立地找到“相关”专家。然而,在实际系统中,必须考虑各种特定于领域的约束。例如,要审查一篇论文,最好至少有一名高级审稿人来指导审查过程。一个重要的问题是:“我们能否设计一个框架来有效地找到各种约束条件下专业知识匹配的最优解决方案?”本文通过在基于约束的优化框架中提出专家匹配问题来探索这种方法。有趣的是,该问题可以与凸成本流问题联系起来,凸成本流问题保证了给定约束条件下的最优解。我们还提出了一种在线匹配算法,以支持实时合并用户反馈。本文对两种不同类型的专家匹配问题进行了评价。实验结果验证了该方法的有效性。
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Expertise Matching via Constraint-Based Optimization
Expertise matching, aiming to find the alignment between experts and queries, is a common problem in many real applications such as conference paper-reviewer assignment, product-reviewer alignment, and product-endorser matching. Most of existing methods for this problem usually find “relevant” experts for each query independently by using, e.g., an information retrieval method. However, in real-world systems, various domain-specific constraints must be considered. For example, to review a paper, it is desirable that there is at least one senior reviewer to guide the reviewing process. An important question is: “Can we design a framework to efficiently find the optimal solution for expertise matching under various constraints?” This paper explores such an approach by formulating the expertise matching problem in a constraint based optimization framework. Interestingly, the problem can be linked to a convex cost flow problem, which guarantees an optimal solution under given constraints. We also present an online matching algorithm to support incorporating user feedbacks in real time. The proposed approach has been evaluated on two different genres of expertise matching problems. Experimental results validate the effectiveness of the proposed approach.
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