In recent years, with the increase of social investment in scientific research, the number of research results in various fields has increased significantly. Cross-disciplinary research results have gradually become an emerging frontier research direction. There is a certain dependence between a large number of research results. It is difficult to effectively analyze today's scientific research results when looking at a single research field in isolation. How to effectively use the huge number of scientific papers to help researchers becomes a challenge. This paper introduces the research status at home and abroad in terms of domain information mining and topic evolution law of scientific and technological papers from three aspects: the semantic feature representation learning of scientific and technological papers, the field information mining of scientific and technological papers, and the mining and prediction of research topic evolution rules of scientific and technological papers.
翻译:近年来,随着科学研究社会投资的增加,各个领域的研究成果数量显著增加,跨学科研究成果逐渐成为新的前沿研究方向,大量研究成果之间有一定的依存关系,在孤立地研究单一研究领域时难以有效分析今天的科学研究成果,如何有效利用大量科学论文帮助研究人员成为一个挑战,本文介绍了国内外在领域信息采矿方面的研究地位,以及科学和技术论文的三个方面的专题演变法:科学和技术论文的语义学学习、科学和技术论文的实地信息挖掘以及科学和技术论文研究专题演变规则的采矿和预测。