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AIとの対話は変化しない?ユーザー行動の粘着性と多様性を分析
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ポイント
- 大規模言語モデル(LLM)との長期的な対話データを分析し、個々のユーザー行動の変化は小さいことを明らかにした。
- 活発なユーザーほど成功率が高く、より複雑で専門的なタスクにLLMを利用する傾向が見られた。
- 本研究は、既存のユーザー行動が変化しにくいこと、ユーザー間の多様性が大きいことを示唆している。
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. Ultimately, our results suggest that existing user behavior is difficult to change and demonstrate the extent of user heterogeneity. Our comparison between datasets highlights that WildChat does not represent typical user-AI interactions, an important caveat for downstream uses of the data.
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