A New Citation Recommendation Strategy Based on Term Functions in Related Studies Section

Haihua Chen
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引用次数: 4

Abstract

Abstract Purpose Researchers frequently encounter the following problems when writing scientific articles: (1) Selecting appropriate citations to support the research idea is challenging. (2) The literature review is not conducted extensively, which leads to working on a research problem that others have well addressed. The study focuses on citation recommendation in the related studies section by applying the term function of a citation context, potentially improving the efficiency of writing a literature review. Design/methodology/approach We present nine term functions with three newly created and six identified from existing literature. Using these term functions as labels, we annotate 531 research papers in three topics to evaluate our proposed recommendation strategy. BM25 and Word2vec with VSM are implemented as the baseline models for the recommendation. Then the term function information is applied to enhance the performance. Findings The experiments show that the term function-based methods outperform the baseline methods regarding the recall, precision, and F1-score measurement, demonstrating that term functions are useful in identifying valuable citations. Research limitations The dataset is insufficient due to the complexity of annotating citation functions for paragraphs in the related studies section. More recent deep learning models should be performed to future validate the proposed approach. Practical implications The citation recommendation strategy can be helpful for valuable citation discovery, semantic scientific retrieval, and automatic literature review generation. Originality/value The proposed citation function-based citation recommendation can generate intuitive explanations of the results for users, improving the transparency, persuasiveness, and effectiveness of recommender systems.
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基于术语函数的引文推荐新策略
研究人员在撰写科学论文时经常遇到以下问题:(1)选择合适的引文来支持研究思路具有挑战性。(2)文献综述没有进行广泛的研究,这导致研究的问题别人已经很好地解决了。本研究将重点放在相关研究部分的引文推荐上,利用引文上下文的术语函数,有可能提高文献综述的写作效率。设计/方法/方法我们提出了九个术语函数,其中三个是新创建的,六个是从现有文献中确定的。使用这些术语函数作为标签,我们注释了三个主题的531篇研究论文,以评估我们提出的推荐策略。采用BM25、Word2vec和VSM作为推荐的基线模型。然后利用术语函数信息来提高性能。实验结果表明,基于术语函数的方法在查全率、查准率和f1分数测量方面优于基线方法,表明术语函数在识别有价值的引文方面是有用的。研究局限:由于相关研究部分段落的标注引用功能的复杂性,数据集不足。应该执行更多最新的深度学习模型来验证所提出的方法。引文推荐策略有助于有价值的引文发现、语义科学检索和文献综述自动生成。本文提出的基于引文函数的引文推荐可以为用户生成对结果的直观解释,提高推荐系统的透明度、说服力和有效性。
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