Empirical Evaluation Of Chatgpt On Requirements Information Retrieval Under Zero-shot Setting · The Large Language Model Bible Contribute to LLM-Bible

Empirical Evaluation Of Chatgpt On Requirements Information Retrieval Under Zero-shot Setting

Zhang Jianzhang, Chen Yiyang, Niu Nan, Wang Yinglin, Liu Chuang. Arxiv 2023

[Paper]    
Applications GPT Model Architecture Tools

Recently, various illustrative examples have shown the impressive ability of generative large language models (LLMs) to perform NLP related tasks. ChatGPT undoubtedly is the most representative model. We empirically evaluate ChatGPT’s performance on requirements information retrieval (IR) tasks to derive insights into designing or developing more effective requirements retrieval methods or tools based on generative LLMs. We design an evaluation framework considering four different combinations of two popular IR tasks and two common artifact types. Under zero-shot setting, evaluation results reveal ChatGPT’s promising ability to retrieve requirements relevant information (high recall) and limited ability to retrieve more specific requirements information (low precision). Our evaluation of ChatGPT on requirements IR under zero-shot setting provides preliminary evidence for designing or developing more effective requirements IR methods or tools based on LLMs.

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