从文章摘要文本中获取一类科学结果以提高推荐系统质量的方法

I. A. Kuznetsov, A. Guseva
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引用次数: 1

摘要

在本文中,作者提出了一种从科学文章文本中提取科学结果类型的方法,并将这些结果实现到推荐系统中以提高其输出。科学成果和文本数据的类型根据假设的用户需求划分为相应的类。类表示文章中科学成果的类型。提出的方法包括确定科学文章的有意义的搭配。主题建模应用于从文章摘要文本接收到的搭配集。获得的主题(类)显示了科学文章与科学结果类型之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method for Obtaining a Type of Scientific Result From the Text of an Article Abstract to Improve the Quality of Recommender Systems
In this paper, the authors present a method to deriving type of scientific results from the texts of scientific articles and implementing these results into recommender systems to enhance their output. Type of scientific results and text data are divided into corresponding classes, which are based on hypothetical user needs. The classes indicate the type of a scientific result in article. The proposed approach involves the determination of meaningful collocations for scientific article. Topic modeling is applied to the received collocation sets from the text of an article abstract. The topics (classes) obtained show the relationship between a scientific article and the type of scientific result.
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