Unexploited Information Value in Human-AI Collaboration
- URL: http://arxiv.org/abs/2411.10463v1
- Date: Sun, 03 Nov 2024 01:34:45 GMT
- Title: Unexploited Information Value in Human-AI Collaboration
- Authors: Ziyang Guo, Yifan Wu, Jason Hartline, Jessica Hullman,
- Abstract summary: How to improve performance of a human-AI team is often not clear without knowing what particular information and strategies each agent employs.
We propose a model based in statistically decision theory to analyze human-AI collaboration.
- Score: 23.353778024330165
- License:
- Abstract: Humans and AIs are often paired on decision tasks with the expectation of achieving complementary performance -- where the combination of human and AI outperforms either one alone. However, how to improve performance of a human-AI team is often not clear without knowing more about what particular information and strategies each agent employs. In this paper, we propose a model based in statistically decision theory to analyze human-AI collaboration from the perspective of what information could be used to improve a human or AI decision. We demonstrate our model on a deepfake detection task to investigate seven video-level features by their unexploited value of information. We compare the human alone, AI alone and human-AI team and offer insights on how the AI assistance impacts people's usage of the information and what information that the AI exploits well might be useful for improving human decisions.
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