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ハイブリッドグループにおける集団的認知:ネットワーク科学による統合的アプローチ
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ポイント
- 人間とAIが混在するチームにおいて、集団的知能がどのように創発されるかをネットワーク科学の観点から体系化した。
- 人間とAIの認知特性の違いを考慮し、従来の人間のみやAIのみのネットワーク理論をハイブリッド環境へ拡張した。
- ハイブリッドチーム特有の構造的役割を特定し、組織設計やAIガバナンスにおける新たな知見と指針を提示した。
Abstract
The growing integration of AI agents into human teams calls for a principled understanding of how collective intelligence emerges in hybrid systems. Recent frameworks clarify how attention, memory, and reasoning differences shape human-AI interaction at the individual and dyadic levels, but a formal account of how these differences scale to group-level dynamics is lacking. Most network science has examined either human-only or multi-agent AI-only systems, leaving open how its findings and parametrizations translate to hybrid groups. This chapter synthesizes network science, collective cognition, and multi-agent systems through the lens of attention, memory, and reasoning. We review how task environments, group topologies, agent-level processes, and incentive structures shape collective outcomes in human-only and AI-only networks, then examine how these results extend to hybrid settings, conceptualizing hybrid networks as heterogeneous human-AI nodes and links with distinct individual and transactive constraints. Our comparative analysis identifies which network effects are robust across agent types and which require revision, and highlights configurations that were peripheral in single-type traditions, such as human gatekeepers of AI sub-networks, but become structurally central in hybrid teams. Integrating a cognitive systems perspective with network science, we clarify how established exploration-exploitation and efficiency-redundancy trade-offs may operate differently in hybrid teams, and conclude with implications for organizational design, governance, and the responsible development of hybrid intelligence systems.
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