Can the analysis of the semantics of words used in the text of a scientific paper predict its future impact measured by citations? This study details examples of automated text classification that achieved 80% success rate in distinguishing between highly-cited and little-cited articles. Automated intelligent systems allow the identification of promising works that could become influential in the scientific community. The problems of quantifying the meaning of texts and representation of human language have been clear since the inception of Natural Language Processing. This paper presents a novel method for vector representation of text meaning based on information theory and show how this informational semantics is used for text classification on the basis of the Leicester Scientific Corpus. We describe the experimental framework used to evaluate the impact of scientific articles through their informational semantics. Our interest is in citation classification to discover how important semantics of texts are in predicting the citation count. We propose the semantics of texts as an important factor for citation prediction. For each article, our system extracts the abstract of paper, represents the words of the abstract as vectors in Meaning Space, automatically analyses the distribution of scientific categories (Web of Science categories) within the text of abstract, and then classifies papers according to citation counts (highly-cited, little-cited). We show that an informational approach to representing the meaning of a text has offered a way to effectively predict the scientific impact of research papers.
翻译:分析科学论文文本中使用的文字的语义是否能够预测其未来影响?本研究报告详细列举了自动文本分类的例子,在区分高引用和少引用的文章方面,实现了80%的成功率。自动化智能系统可以确定在科学界具有影响力的有希望的作品。自自然语言处理开始以来,对文本含义和人类语言表述的量化问题就已经十分明确。本文介绍了一种基于信息理论的矢量表达文本含义的新颖方法,并展示了这种信息语义如何用于在莱斯特科学公司的基础上进行文本分类。我们描述了用来通过信息语义来评价科学文章影响的实验框架。我们的兴趣是引用分类,以了解文本在预测引注数方面的重要性。我们建议文本的语义描述是引言预测的一个重要因素。对于每篇文章,我们的系统摘录了纸的抽象,代表了在当时空间中作为矢量的抽象文字的文字,自动分析了科学分类的分布情况(Web of Science commissional ) 。我们想引用的是一份高层次的科学论文的缩略图。