Enhancing Requirement Traceability through Data Augmentation Using Large Language Models
Jianzhang Zhang, Jialong Zhou, Nan Niu, Chuang Liu
Published: 2025/9/24
Abstract
Requirements traceability is crucial in software engineering to ensure consistency between requirements and code. However, existing automated traceability methods are constrained by the scarcity of training data and challenges in bridging the semantic gap between artifacts. This study aims to address the data scarcity problem in requirements traceability by employing large language models (LLMs) for data augmentation. We propose a novel approach that utilizes prompt-based techniques with LLMs to generate augmented requirement-to-code trace links, thereby enhancing the training dataset. Four LLMs (Gemini 1.5 Pro, Claude 3, GPT-3.5, and GPT-4) were used, employing both zero-shot and few-shot templates. Moreover, we optimized the encoder component of the tracing model to improve its efficiency and adaptability to augmented data. The key contributions of this paper are: (1) proposing and evaluating four prompt templates for data augmentation; (2) providing a comparative analysis of four LLMs for generating trace links; (3) enhancing the model's encoder for improved adaptability to augmented datasets. Experimental results show that our approach significantly enhances model performance, achieving an F1 score improvement of up to 28.59%, thus demonstrating its effectiveness and potential for practical application.