AIDB Daily Papers
人間とAIの協調を適応させるHAASフレームワーク:ポリシー主導のタスク配分
※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。
ポイント
- 本研究では、人間とAIのタスク配分を適応させるHAASフレームワークを開発・実装した。
- HAASは、ガバナンス制約を強制するルールベースシステムと、協調モードを選択するコンテクスチュアルバンディット学習器を組み合わせ、重要かつ新しい。
- 実験の結果、ガバナンスは調整可能な設計変数であり、製造業ではパフォーマンス向上と疲労軽減を同時に実現し、経験と共に競争力が高まることが示された。
Abstract
Deciding how to distribute work between humans and AI systems is a central challenge in organisational design. Most approaches treat this as a binary choice, yet the operational reality is richer: humans and AI routinely share tasks or take complementary roles depending on context, fatigue, and the stakes involved. Governing that distribution -- balancing efficiency, oversight, and human capability -- remains an open problem. This paper presents Human-AI Adaptive Symbiosis (HAAS), an implemented framework for adaptive task allocation in software engineering and manufacturing. HAAS combines two coupled components: a rule-based expert system that enforces governance constraints before any learning occurs, and a contextual-bandit learner that selects among feasible collaboration modes from outcome feedback. Task-agent fit is represented through five auditable cognitive dimensions and a five-mode autonomy spectrum -- from human-only to fully autonomous -- embedded in a reproducible benchmark spanning both domains. Three empirical findings emerge. First, governance is not a binary switch but a tunable design variable: tighter constraints predictably convert autonomous AI assignments into supervised collaborations, with domain-specific costs and benefits. Second, in manufacturing, stronger governance can improve operational performance and reduce fatigue simultaneously -- a workload-buffering effect that contradicts the usual framing of governance as pure overhead. Third, no single governance setting dominates across all contexts; moderate governance becomes increasingly competitive as the learner accumulates experience within the governed action space. Together, these findings position HAAS as a pre-deployment workbench for comparing and inspecting human--AI allocation policies before organisational commitment.
Paper AI Chat
この論文のPDF全文を対象にAIに質問できます。
質問の例: