Evaluation of Prompt Fine-Tuning Data Efficacy in Large Language Models: A Focus on Data Quality
Liu Xiaohui Ran Congjing Liu Xingshen Li Wang
School of Information Management, Wuhan University, Wuhan, 430072
Online:2025-05-26
Published:2025-06-16
About author:Liu Xiaohui, Ph.D. candidate, research interests include information resource management, data elements, and informetrics; Ran Congjing(corresponding author), professor, Ph.D., doctoral supervisor, research interests include intellectual property, big data governance,Email: rancongjing@whu.edu.cn; Liu Xingshen, Ph.D. candidate, research interests include data science, natural language processing, intellectual property; Li Wang, Ph.D.candidate, research interests include data science, intellectual property.
Supported by:
This paper is one of the research outcomes of the Major Project of the National Social Science Fund of China "Research on the Construction of a Security System for Big Data Sovereignty" (21&ZD169) and the Youth Project of the National Social Science Fund of China "Research on the Intelligent Discrimination and Recommendation of University Patent Quality Based on Knowledge Units"(23CTQ028).
Liu Xiaohui Ran Congjing Liu Xingshen Li Wang. Evaluation of Prompt Fine-Tuning Data Efficacy in Large Language Models: A Focus on Data Quality[J]. Journal of Information Resources Management, 2025, 15(3): 108-121.