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Finding relevant semantic association paths through user-specific intermediate entities

机译:通过特定于用户的中间实体查找相关的语义关联路径

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Semantic Associations are complex relationships between entities over metadata represented in a RDF graph. While searching for complex relationships, it is possible to find too many relationships between entities. Therefore, it is important to locate interesting and meaningful relations and rank them before presenting to the end user. In recent years e-learning systems have become very popular in all fields of higher education. In an e-learning environment, user may expect to search the semantic relationship paths between two concepts or entities. There may be numerous relationships between two entities which involve more intermediate entities. In order to filter the size of results set based on user's relevance, user may introduce one or more known intermediate entities. In this paper, we present a Modified bidirectional Breadth-First-Search algorithm for finding paths between two entities which pass through other intermediate entities and the paths are ranked according to the users' needs. We have evaluated our system through empirical evaluation. We have compared the execution time to discover the paths between entities for our proposed search method and existing method. According to our experiments our proposed algorithm improves search efficiently. The average correlation coefficient between the proposed system ranking and the human ranking is 0.69. It explains that our proposed system ranking is highly correlated with human ranking.
机译:语义关联是RDF图中表示的元数据之间的实体之间的复杂关系。在搜索复杂的关系时,可能会发现实体之间的关系过多。因此,重要的是要找到有趣且有意义的关系,并在将其呈现给最终用户之前对其进行排名。近年来,电子学习系统已在高等教育的所有领域中变得非常流行。在电子学习环境中,用户可能希望搜索两个概念或实体之间的语义关系路径。两个实体之间可能存在许多关系,其中涉及更多的中间实体。为了基于用户的相关性过滤结果集的大小,用户可以引入一个或多个已知的中间实体。在本文中,我们提出了一种改进的双向广度优先搜索算法,用于查找经过其他中间实体的两个实体之间的路径,并根据用户的需求对路径进行排名。我们已经通过经验评估对我们的系统进行了评估。我们已经比较了执行时间,以发现我们建议的搜索方法和现有方法之间的实体之间的路径。根据我们的实验,我们提出的算法可以有效地提高搜索效率。拟议的系统排名与人类排名之间的平均相关系数为0.69。这说明我们提出的系统排名与人类排名高度相关。

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