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ユーザーの心を捉え、AIエージェントの心の理論を強化するUserHarness
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ポイント
- ユーザーの信念と意図を直接再構築するUserHarnessフレームワークを提案した。
- 従来の複雑なパイプラインとは異なり、ユーザーの心的状態を明示的にモデル化する点が重要である。
- 5つのベンチマークで既存手法を大幅に上回る精度を達成し、より適応的なAIアシスタントの基盤を示した。
Abstract
Understanding what a user believes and intends is central to building effective agent assistants. This ability is often evaluated through Theory-of-Mind (ToM) tasks, where success requires reasoning from the user's perspective. However, many existing approaches address ToM with complex pipelines that model behavior indirectly, without explicitly reconstructing the user's mental state. This misses the core structure of the problem: users act based on their beliefs, which are updated through observations of the environment; beliefs and intentions jointly determine actions, which in turn change the environment; and social reasoning often requires nested beliefs about what others believe or intend. We propose UserHarness, a simple framework that reframes ToM reasoning as explicit user-mind reconstruction. UserHarness decomposes the user's mental state, its relation to the external environment, and the actions that follow from it, enabling agents to track what the user observes, believes, intends, and does. Across five benchmarks, UserHarness reaches up to 95.94% macro accuracy, improving over existing inference methods by more than 15% relative and over the strongest prompt-only harness by about 20% relative. These results suggest that robust user understanding requires reasoning from the roots of the user's mind, positioning user harnessing as a promising foundation for more adaptive future assistants.
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