A knowledge-driven approach for personalized literature recommendation based on deep semantic discrimination

Hongzhi Kuai, Jianzhuo Yan, Jianhui Chen, Yongchuan Yu, Haiyuan Wang, Ning Zhong
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引用次数: 2

Abstract

The query and selection of scientific literatures are knowledge driven. Researchers regard public literature resources as target knowledge sources and use their own domain knowledge to explore in them. However, existing knowledge-driven methods of literature recommendation mainly focus on morphological matching and cannot effectively resolve polysemous phenomenon brought by "knowledge overload". Based on this observation, this paper presents a knowledge-driven approach for personalized literature recommendation. Domain ontology, synonyms and knowledge labels are integrated into a multidimensional domain knowledge map for modeling user knowledge requirements and literature contents based on deep semantic discrimination. The personalized recommendation is achieved by calculating knowledge distances between users and literatures. Experimental results on a real data set of PubMed show that the recommended relevance of the current method is 67%, better than other methods.
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基于深度语义辨析的个性化文献推荐知识驱动方法
科学文献的查询和选择是知识驱动的。研究者将公共文献资源作为目标知识来源,运用自己的领域知识在公共文献资源中进行探索。然而,现有的知识驱动的文献推荐方法主要集中在形态匹配上,不能有效解决“知识过载”带来的多义现象。基于此,本文提出了一种基于知识驱动的个性化文献推荐方法。基于深度语义判别,将领域本体、同义词和知识标签集成成多维领域知识地图,对用户知识需求和文献内容进行建模。通过计算用户与文献之间的知识距离来实现个性化推荐。在PubMed真实数据集上的实验结果表明,当前方法的推荐相关度为67%,优于其他方法。
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