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Recommender System for Information Retrieval Using Natural Language Querying Interface Based in Bibliographic Research for Naïve Users

机译:基于Na&amp的书目研究的自然语言查询界面,使用自然语言查询界面的推荐制度;#239; VE用户

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With the increasing of data on the internet, data analysis has become inescapable to gain time and efficiency, especially in bibliographic information retrieval systems. We can estimate the number of actual scientific journals points to around 40 , 000 with about four million articles published each year. Machine learning and deep learning applied to recommender systems had become unavoidable whether in industry or in research. In this current, we propose an optimized interface for bibliographic information retrieval as a running example, which allows different kind of researchers to find their needs following some relevant criteria through natural language understanding. Papers indexed in Web of Science and Scopus are in high demand. Natural language including text and linguistic-based techniques, such as tokenization, named entity recognition, syntactic and semantic analysis, are used to express natural language queries. Our Interface uses association rules to find more related papers for recommendation. Spanning trees are challenged to optimize the search process of the system.
机译:随着互联网上的数据的增加,数据分析已经变得无法获得时间和效率,特别是在书目信息检索系统中。我们可以估计实际科学期刊的数量,大约40,000岁,每年发表约400万条。应用于推荐系统的机器学习和深度学习变得不可避免,无论是在工业或研究中都变得不可避免。在此目前,我们提出了一种优化的界面,用于书目信息检索作为一个跑步示例,这允许通过自然语言理解,不同类型的研究人员在一些相关标准之后找到他们的需求。在科学网络和Scopus网络中索引的论文处于高需求。包括文本和基于语言的技术的自然语言,例如令牌化,命名实体识别,句法和语义分析,用于表达自然语言查询。我们的界面使用关联规则来查找更多相关文件以供推荐。跨越树的挑战是优化系统的搜索过程。

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