Contrastive Explanations That Anticipate Human Misconceptions Can Improve Human Decision-Making Skills
- URL: http://arxiv.org/abs/2410.04253v1
- Date: Sat, 5 Oct 2024 18:21:04 GMT
- Title: Contrastive Explanations That Anticipate Human Misconceptions Can Improve Human Decision-Making Skills
- Authors: Zana Buçinca, Siddharth Swaroop, Amanda E. Paluch, Finale Doshi-Velez, Krzysztof Z. Gajos,
- Abstract summary: People's decision-making abilities often fail to improve when they rely on AI for decision-support.
Most AI systems offer "unilateral" explanations that justify the AI's decision but do not account for users' thinking.
We introduce a framework for generating human-centered contrastive explanations that explain the difference between AI's choice and a predicted, likely human choice.
- Score: 24.04643864795939
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: People's decision-making abilities often fail to improve or may even erode when they rely on AI for decision-support, even when the AI provides informative explanations. We argue this is partly because people intuitively seek contrastive explanations, which clarify the difference between the AI's decision and their own reasoning, while most AI systems offer "unilateral" explanations that justify the AI's decision but do not account for users' thinking. To align human-AI knowledge on decision tasks, we introduce a framework for generating human-centered contrastive explanations that explain the difference between AI's choice and a predicted, likely human choice about the same task. Results from a large-scale experiment (N = 628) demonstrate that contrastive explanations significantly enhance users' independent decision-making skills compared to unilateral explanations, without sacrificing decision accuracy. Amid rising deskilling concerns, our research demonstrates that incorporating human reasoning into AI design can foster human skill development.
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