AIDB Daily Papers
InnerPond:内省を促すマルチエージェントによる自己対話システム
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ポイント
- InnerPondは、自己を複数の視点から捉え、対話を促すマルチエージェントシステムである。
- 対話的自己理論に基づき、AIが価値観や願望などの内的視点をエージェントとして表現する点が新しい。
- キャリア選択を控えた若者の実験で、AIとの協働による自己理解の深化を示唆する結果が得られた。
Abstract
Introspection is central to identity construction and future planning, yet most digital tools approach the self as a unified entity. In contrast, Dialogical Self Theory (DST) views the self as composed of multiple internal perspectives, such as values, concerns, and aspirations, that can come into tension or dialogue with one another. Building on this view, we designed InnerPond, a research probe in the form of a multi-agent system that represents these internal perspectives as distinct LLM-based agents for introspection. Its design was shaped through iterative explorations of spatial metaphors, interaction scaffolding, and conversational orchestration, culminating in a shared spatial environment for organizing and relating multiple inner perspectives. In a user study with 17 young adults navigating career choices, participants engaged with the probe by co-creating inner voices with AI, composing relational inner landscapes, and orchestrating dialogue as observers and mediators, offering insight into how such systems could support introspection. Overall, this work offers design implications for AI-supported introspection tools that enable exploration of the self's multiplicity.
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