科学出版物的主题分析与有影响力的论文发现

Ye Li, Jun He, Hongyan Liu
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引用次数: 1

摘要

随着科学研究的发展,科学出版物是研究领域新人的宝贵资源。但是,大量的科学出版物使研究人员进入一个新的研究领域成为一个挑战。作为对这一问题的良好实践,提出了专题组织出版物。本文提出了两个改进的LDA主题模型cc-LDA和cp-LDA,以解决科学出版物的主题分析和有影响力的论文发现问题。与现有的LDA研究相比,我们将引文的出现次数和出现位置等信息纳入到模型中。cc-LDA模型将论文内容和被引频次集成到LDA模型中,而cp-LDA模型同时考虑被引频次和被引位置。这两种模型不仅可以以引文分布的形式找到主题,而且可以帮助发现特定主题下有影响力的论文。此外,这两种模型都可以为论文提取更多具有代表性的向量,从而在后续聚类中获得良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic Analysis and Influential Paper Discovery on Scientific Publications
With the development of scientific research, scientific publications are valuable resources for new-comers in the research field. But massive scientific publications make it a challenge for researchers diving into a new research field. As a good practice to this problem, topics are put forward to organize publications. In this paper, we propose two modified LDA topic models as solutions to topic analysis and influential paper discovery on scientific publications, cc-LDA and cp-LDA. Compared to state-of-the-art researches on LDA, we incorporate citation information including its occurrence times and occurrence position into our models. Model cc-LDA integrates paper content and citation occurrence into LDA model, while cp-LDA considers both occurrence and position of citations. Both models can not only find topics in the form of citation distribution, but also help discover influential papers under certain topics. Furthermore, both models can extract more representative vectors for papers, which achieve good performance in subsequent clustering.
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