More Isn't Always Better: Balancing Decision Accuracy and Conformity Pressures in Multi-AI Advice

要旨

Just as people improve decision-making by consulting diverse human advisors, they can now also consult with multiple AI systems. Prior work on group decision-making shows that advice aggregation creates pressure to conform, leading to overreliance. However, the conditions under which multi-AI consultation improves or undermines human decision-making remain unclear. We conducted experiments with three tasks in which participants received advice from panels of AIs. We varied panel size, within-panel consensus, and the human-likeness of presentation. Accuracy improved for small panels relative to a single AI; larger panels yielded no gains. The level of within-panel consensus affected participants' reliance on AI advice: High consensus fostered overreliance; a single dissent reduced pressure to conform; wide disagreement created confusion and undermined appropriate reliance. Human-like presentations increased perceived usefulness and agency in certain tasks, without raising conformity pressure. These findings yield design implications for presenting multi-AI advice that preserve accuracy while mitigating conformity.

著者
Yuta Tsuchiya
The University of Tokyo, Tokyo, Japan
Yukino Baba
The University of Tokyo, Tokyo, Japan
動画

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: Human-AI Decision Making

P1 - Room 134
7 件の発表
2026-04-14 20:15:00
2026-04-14 21:45:00