oai:arXiv.org:2409.10741
Computer Science
2024
9/25/2024
End-to-end web testing is challenging due to the need to explore diverse web application functionalities.
Current state-of-the-art methods, such as WebCanvas, are not designed for broad functionality exploration; they rely on specific, detailed task descriptions, limiting their adaptability in dynamic web environments.
We introduce NaviQAte, which frames web application exploration as a question-and-answer task, generating action sequences for functionalities without requiring detailed parameters.
Our three-phase approach utilizes advanced large language models like GPT-4o for complex decision-making and cost-effective models, such as GPT-4o mini, for simpler tasks.
NaviQAte focuses on functionality-guided web application navigation, integrating multi-modal inputs such as text and images to enhance contextual understanding.
Evaluations on the Mind2Web-Live and Mind2Web-Live-Abstracted datasets show that NaviQAte achieves a 44.23% success rate in user task navigation and a 38.46% success rate in functionality navigation, representing a 15% and 33% improvement over WebCanvas.
These results underscore the effectiveness of our approach in advancing automated web application testing.
Shahbandeh, Mobina,Alian, Parsa,Nashid, Noor,Mesbah, Ali, 2024, NaviQAte: Functionality-Guided Web Application Navigation