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

TL;DR
This paper introduces a novel citation recommendation method based on term functions in the related studies section, improving the accuracy of literature review support through annotated citation contexts and enhanced retrieval models.
Contribution
The study proposes nine term functions for citation contexts and demonstrates their effectiveness in improving citation recommendation performance over baseline models.
Findings
Term function-based methods outperform baselines in recall, precision, and F1-score.
Annotated citation contexts help identify valuable citations more accurately.
The approach enhances transparency and effectiveness of citation recommendation systems.
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. This 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…
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