Computer Science
Improving Web Element Localization by Using a Large Language Model
M. Nass, E. Alégroth, et al.
VON Similo LLM enhances web element localization by using an LLM to select the most likely element from top candidates identified by VON Similo. In an empirical study on 804 element pairs it reduced failed localizations from 70 to 40 (43% reduction), though with slower execution and added GPT-4 cost. Research conducted by Michel Nass, Emil Alégroth, and Robert Feldt.
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