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人間中心の省察的アーキテクチャによる人間とAIの協調的意思決定
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ポイント
- AIと人間の協調的意思決定タスクを確率ゲームとして定式化し、人間とAIの相互作用を最適化する枠組みを構築した。
- 人間のフィードバックを反復的に取り入れる省察的アーキテクチャにより、AIの判断を人間の期待や好みに適合させた。
- 提案手法は意思決定の有効性を向上させ、人間にとって質の高い推奨を提供できることが実験で示された。
Abstract
The use of Large Language Models (LLMs) across diverse areas of human activity-ranging from everyday tasks to safety-critical applications-aims to enhance decision-making effectiveness with minimal human feedback. Concurrently, it seeks to align decisions with human expectations, preferences, and needs while mitigating risks associated with AI non-determinism. However, humans frequently over- or under-rely on AI recommendations, and current AI systems remain poorly calibrated to human expectations. To address these challenges, we introduce a human-AI collaborative decision-making framework designed to augment human capabilities and align AI agents with human preferences and expectations. Specifically, this paper (a) formulates the collaborative decision-making task as a stochastic game between an AI agent and a human player, and (b) proposes the Human-Centric Reflective Architecture (HCRA), which integrates human-calibrated models with reinforcement learning agents that leverage linguistic feedback in an iterative, reflective process. Evaluation results demonstrate that HCRA enhances decision-making effectiveness and delivers high-quality recommendations.
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