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Semantic Expansion Network Based Relevance Analysis for Medical Information Retrieval

机译:基于语义扩展网络的医学信息检索相关性分析

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Complex networks provide quantitative measures for complex systems, thus enabling effective semantic network analysis. This research aims to develop semantic relevance analysis methods for medical information retrieval to answer questions for clinical decision support system. We proposed a query based semantic expansion network for semantic relevance analysis in medical information retrieval tasks. Empirical studies of the network structure and attributes for discriminant relevance analysis revealed that expansion networks for relevant documents have a compact structure, which provides new features to identify relevant documents. We also found the existence of densely connected nodes as hubs in the associative networks for queries. Then, we proposed a novel rescaled centrality measure to evaluate the importance of query concepts in the semantic expansion network. Experiments with real-world data demonstrated that the proposed measure is able to improve the performance for relevance analysis.
机译:复杂网络为复杂系统提供定量措施,从而实现了有效的语义网络分析。本研究旨在开发用于医疗信息检索的语义相关性分析方法,以回答临床决策支持系统的问题。我们提出了一种基于查询的语义扩展网络,用于医学信息检索任务中的语义相关性分析。判别相关性分析的网络结构和属性的实证研究表明,相关文件的扩展网络具有紧凑的结构,它提供了识别相关文件的新功能。我们还发现存在密集连接的节点作为查询的关联网络中的集线器。然后,我们提出了一种新颖的重新定义措施,以评估查询概念在语义扩展网络中的重要性。实验与现实世界数据表明,所提出的措施能够改善相关性分析的性能。

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