Adopt $\neq$ Adapt: Longitudinal Analyses of LLM Conversations in the Wild 文章

ArXiv CS.CL2026-05-29NEWSen作者: Rebecca M. M. Hicke, Kiran Tomlinson

摘要

arXiv:2605.29018v1 Announce Type: cross Abstract: Although a growing body of research has begun to describe user--LLM interactions, the picture it paints is largely static; little is known about how individual users change their behavior over time. To address this gap, we analyze the conversational trajectories of $\sim$12,000 randomly sampled Microsoft Bing Copilot users and compare these with data from WildChat-4.8M. While the Copilot data contains significant population-level trends, we find that trends in individual user trajectories are much weaker; user habits prove to be overwhelmingly sticky. We also find stark differences between users of different activity levels: more active users have more successful conversations and use the LLM for more complex and professionally oriented tasks. Some user trends also appear in WildChat-4.8M, but we find evidence that this dataset is significantly skewed towards highly proficient "power" users.

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