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A survey on sentiment analysis of scientific citations

机译:科学引用情感分析调查

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摘要

Sentiment analysis of scientific citations has received much attention in recent years because of the increased availability of scientific publications. Scholarly databases are valuable sources for publications and citation information where researchers can publish their ideas and results. Sentiment analysis of scientific citations aims to analyze the authors' sentiments within scientific citations. During the last decade, some review papers have been published in the field of sentiment analysis. Despite the growth in the size of scholarly databases and researchers' interests, no one as far as we know has carried out an in-depth survey in a specific area of sentiment analysis in scientific citations. This paper presents a comprehensive survey of sentiment analysis of scientific citations. In this review, the process of scientific citation sentiment analysis is introduced and recently proposed methods with the main challenges are presented, analyzed and discussed. Further, we present related fields such as citation function classification and citation recommendation that have recently gained enormous attention. Our contributions include identifying the most important challenges as well as the analysis and classification of recent methods used in scientific citation sentiment analysis. Moreover, it presents the normal process, and this includes citation context extraction, public data sources, and feature selection. We found that most of the papers use classical machine learning methods. However, due to limitations of performance and manual feature selection in machine learning, we believe that in the future hybrid and deep learning methods can possibly handle the problems of scientific citation sentiment analysis more efficiently and reliably.
机译:由于科学出版物的可用性增加,科学引用的情感分析近年来受到了很大的关注。学术数据库是出版物和引文信息的有价值的来源,研究人员可以发布他们的想法和结果。科学引用的情感分析旨在分析科学引用中的作者情绪。在过去十年中,一些审查文件已在情绪分析领域发表。尽管学术数据库和研究人员的利益的规模增长,但我们据知道在科学引用的特定情绪分析领域,没有人在科学引用的特定领域进行了深入的调查。本文介绍了科学引用的情感分析综合调查。在本文中,介绍了科学引文情绪分析的过程,最近提出了具有主要挑战的方法,分析和讨论。此外,我们提出了最近获得了巨大关注的引用函数分类和引用建议等相关领域。我们的贡献包括确定最重要的挑战以及科学引用情绪分析中最近方法的分析和分类。此外,它提出了正常的过程,这包括引文上下文提取,公共数据来源和特征选择。我们发现大多数论文都使用经典机器学习方法。然而,由于机器学习中的性能和手动特征选择的限制,我们认为,在未来的混合和深度学习方法中,可以更有效可靠地处理科学引发情绪分析的问题。

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