AIDB Daily Papers
人間とAIの協調作業における成功を測る:協調性とチームワーク認識尺度の開発と検証
※ 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
- 人間とAIの協調の質を評価する新しい尺度(PCSとTPS)を開発した。
- 本研究は、共同活動理論と進化協力理論に基づき、人間とAIの協調作業の主観的な質を測定する。
- 3つの実験により、開発した尺度が協調の質を正確に評価し、人間とAIの協調研究に貢献することが示された。
Abstract
As human-AI cooperation becomes increasingly prevalent, reliable instruments for assessing the subjective quality of cooperative human-AI interaction are needed. We introduce two theoretically grounded scales: the Perceived Cooperativity Scale (PCS), grounded in joint activity theory, and the Teaming Perception Scale (TPS), grounded in evolutionary cooperation theory. The PCS captures an agent's perceived cooperative capability and practice within a single interaction sequence; the TPS captures the emergent sense of teaming arising from mutual contribution and support. Both scales were adapted for human-human cooperation to enable cross-agent comparisons. Across three studies (N = 409) encompassing a cooperative card game, LLM interaction, and a decision-support system, analyses of dimensionality, reliability, and validity indicated that both scales successfully differentiated between cooperation partners of varying cooperative quality and showed construct validity in line with expectations. The scales provide a basis for empirical investigation and system evaluation across a wide range of human-AI cooperation contexts.
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: