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Graph based Ranked Answers for Keyword Graph Structure

机译:基于图的关键字图结构排名答案

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摘要

Keyword query processing over graph structured data is beneficial across various real world applications. The basic unit, of search and retrieval, in keyword search over graph, is a structure (interconnection of nodes) that connects all the query keywords. This new answering paradigm, in contrast to single web page results given by search engines, brings forth new challenges for ranking. In this paper, we propose a simple but effective Fuzzy set theory based Ranking measure, called FRank. Fuzzy sets acknowledge the contribution of each individual query keyword, discretely, to enumerate node relevance. A novel aggregation operator is defined, to combine the content relevance based fuzzy sets and, compute query dependent edge weights. The final rank, of an answer, is computed by non-monotonic addition of edge weights, as per their relevance to keyword query. FRank evaluates each answer based on the distribution of query keywords and structural connectivity between those keywords. An extensive empirical analysis shows superior performance by our proposed ranking measure as compared to the ranking measures adopted by current approaches in the literature.
机译:对图结构化数据的关键字查询处理在各种实际应用中都是有益的。在图上的关键字搜索中,搜索和检索的基本单元是连接所有查询关键字的结构(节点的互连)。与搜索引擎给出的单个网页结果相反,这种新的回答范例对排名提出了新的挑战。在本文中,我们提出了一种基于Frank的简单而有效的基于模糊集理论的排名度量。模糊集离散地确认每个单独的查询关键字的贡献,以枚举节点的相关性。定义了一种新颖的聚合算子,以结合基于内容相关性的模糊集,并计算与查询相关的边缘权重。根据边缘权重与关键字查询的相关性,通过边缘权重的非单调相加来计算答案的最终排名。 FRank根据查询关键字的分布以及这些关键字之间的结构连接性来评估每个答案。广泛的经验分析表明,与文献中当前方法所采用的排名方法相比,我们提出的排名方法具有更好的性能。

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