[Paper] Detection and Interpretability Analysis of Quotation Errors by Large Language Models

Published: (June 7, 2026 at 08:01 AM EDT)
2 min read
Source: arXiv

Source: arXiv - 2606.08589v1

Overview

Purpose - Quotation error refers to the inconsistency between cited information and its original source. This phenomenon leads to a series of negative impacts, such as misinterpretation of the original research, undermining the academic community’s collective understanding of relevant issues, and weakening the accuracy and fairness of the citation-based academic evaluation system. Existing studies have shown that quotation error is prevalent in the academic community; moreover, manual verification of quotation error is not only labor-intensive but also inefficient. Therefore, this paper proposes the task of ‘automated detection of quotation errors’. Methodology - Adopting a large language model (LLM)-based approach, this paper improves detection performance from two aspects on the basis of existing research: first, employ the fine-tuning approach for LLMs to detect quotation errors; second, incorporating full-text data of the cited literature into dataset construction, and exploring the optimal scheme for building such datasets by comparing three types of full-text integration methods. Based on this, this paper further uses the TokenSHAP tool to conduct interpretability experimental analysis on the model’s prediction results. Findings - The fine-tuning approach for LLMs has improved the performance in detecting quotation errors. Among the different methods for incorporating full-text information, the approach based on using the source abstract yielded the best performance. Originality - The fine-tuning approach for large language models (LLMs) is applied to the task of automated detection of quotation errors, and interpretability analysis is conducted on the model’s output results.

Key Contributions

This paper presents research in the following areas:

  • cs.CL
  • cs.DL
  • cs.IR

Methodology

Please refer to the full paper for detailed methodology.

Practical Implications

This research contributes to the advancement of cs.CL.

Authors

  • Bei Huang
  • Yingyi Zhang
  • Shenghao Huang
  • Chengzhi Zhang

Paper Information

  • arXiv ID: 2606.08589v1
  • Categories: cs.CL, cs.DL, cs.IR
  • Published: June 7, 2026
  • PDF: Download PDF
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