Getting Inspiration for Feature Elicitation: App Store- vs. LLM-based Approach
This addresses the need for insights into differences between popular elicitation methods for software developers, but it is incremental as it builds on existing approaches.
The study compared AppStore- and LLM-based approaches for refining features into sub-features in requirements elicitation, finding that both recommend highly relevant sub-features, but LLMs are more powerful for novel app scopes, though some features are imaginary and require human oversight.
Over the past decade, app store (AppStore)-inspired requirements elicitation has proven to be highly beneficial. Developers often explore competitors' apps to gather inspiration for new features. With the advance of Generative AI, recent studies have demonstrated the potential of large language model (LLM)-inspired requirements elicitation. LLMs can assist in this process by providing inspiration for new feature ideas. While both approaches are gaining popularity in practice, there is a lack of insight into their differences. We report on a comparative study between AppStore- and LLM-based approaches for refining features into sub-features. By manually analyzing 1,200 sub-features recommended from both approaches, we identified their benefits, challenges, and key differences. While both approaches recommend highly relevant sub-features with clear descriptions, LLMs seem more powerful particularly concerning novel unseen app scopes. Moreover, some recommended features are imaginary with unclear feasibility, which suggests the importance of a human-analyst in the elicitation loop.