论文标题
ImpactCite:一种基于XLNET引用影响分析的方法
ImpactCite: An XLNet-based method for Citation Impact Analysis
论文作者
论文摘要
引用在理解科学文献的影响中起着至关重要的作用。通常,对引用进行定量分析,而对引用的定性分析可以揭示出对科学伪像在社区中影响的更深入的见解。因此,引用影响分析(包括情感和意图分类)使我们能够量化引用的质量,最终可以帮助我们估计排名和影响。本文的贡献是两个方面。首先,我们将著名的语言模型(如Bert和Albert)和几个流行的网络进行基准,以完成情感和意图分类。其次,我们提供Impactcite,这是基于XLNET的引用影响分析的方法。所有评估均在一组公开的引用分析数据集上进行。评估结果表明,Impactcite通过在F1得分中优于现有方法的表现效果优于3.44%和1.33%,从而实现了引用意图和情感分类的新最新性能。因此,我们强调了两项任务的影响力(基于XLNET的解决方案),以更好地了解引用的影响。已经采取了其他努力来提出CSC-Clean Copus,这是一个干净可靠的数据集,用于引用情感分类。
Citations play a vital role in understanding the impact of scientific literature. Generally, citations are analyzed quantitatively whereas qualitative analysis of citations can reveal deeper insights into the impact of a scientific artifact in the community. Therefore, citation impact analysis (which includes sentiment and intent classification) enables us to quantify the quality of the citations which can eventually assist us in the estimation of ranking and impact. The contribution of this paper is two-fold. First, we benchmark the well-known language models like BERT and ALBERT along with several popular networks for both tasks of sentiment and intent classification. Second, we provide ImpactCite, which is XLNet-based method for citation impact analysis. All evaluations are performed on a set of publicly available citation analysis datasets. Evaluation results reveal that ImpactCite achieves a new state-of-the-art performance for both citation intent and sentiment classification by outperforming the existing approaches by 3.44% and 1.33% in F1-score. Therefore, we emphasize ImpactCite (XLNet-based solution) for both tasks to better understand the impact of a citation. Additional efforts have been performed to come up with CSC-Clean corpus, which is a clean and reliable dataset for citation sentiment classification.