In many practical applications of AI, an AI model is used as a decision aid for human users. The AI provides advice that a human (sometimes) incorporates into their decision-making process. The AI advice is often presented with some measure of "confidence" that the human can use to calibrate how much they depend on or trust the advice. In this paper, we demonstrate that human-AI performance can be improved by calibrating this confidence to the humans using the advice. In practice, this means presenting calibrated AI models as more or less confident than they actually are. We show empirically that this can improve human-AI performance (measured as the accuracy and confidence of the human's final prediction after seeing the AI advice). We fir...
The dazzling promises of AI systems to augment humans in various tasks hinge on whether humans can a...
Abstract If artificial intelligence (AI) is to help solve individual, societal and global problems, ...
Recent work has shown the potential benefit of selective prediction systems that can learn to defer ...
Powerful predictive AI systems have demonstrated great potential in augmenting human decision-making...
As artificial intelligence advances, it can increasingly be applied in collaborative decision-making...
In decision support applications of AI, the AI algorithm's output is framed as a suggestion to a hum...
Thesis (Ph.D.)--University of Washington, 2022We focus on AI-advised decision making, where AI syste...
Humans increasingly interact with AI systems, and successful interactions rely on individuals trusti...
We analyze how advice from an AI affects complementarities between humans and AI, in particular what...
Explainable AI provides insights to users into the why for model predictions, offering potential for...
With the rise of AI systems in real-world applications comes the need for reliable and trustworthy A...
The data are collected from a human subjects study in which 100 participants solve chess puzzle prob...
Interaction of humans and AI systems is becoming ubiquitous. Specifically, recent advances in machin...
The tools we use have a great impact on our productivity. It is imperative that tools are designed w...
Explainability, interpretability and how much they affect human trust in AI systems are ultimately p...
The dazzling promises of AI systems to augment humans in various tasks hinge on whether humans can a...
Abstract If artificial intelligence (AI) is to help solve individual, societal and global problems, ...
Recent work has shown the potential benefit of selective prediction systems that can learn to defer ...
Powerful predictive AI systems have demonstrated great potential in augmenting human decision-making...
As artificial intelligence advances, it can increasingly be applied in collaborative decision-making...
In decision support applications of AI, the AI algorithm's output is framed as a suggestion to a hum...
Thesis (Ph.D.)--University of Washington, 2022We focus on AI-advised decision making, where AI syste...
Humans increasingly interact with AI systems, and successful interactions rely on individuals trusti...
We analyze how advice from an AI affects complementarities between humans and AI, in particular what...
Explainable AI provides insights to users into the why for model predictions, offering potential for...
With the rise of AI systems in real-world applications comes the need for reliable and trustworthy A...
The data are collected from a human subjects study in which 100 participants solve chess puzzle prob...
Interaction of humans and AI systems is becoming ubiquitous. Specifically, recent advances in machin...
The tools we use have a great impact on our productivity. It is imperative that tools are designed w...
Explainability, interpretability and how much they affect human trust in AI systems are ultimately p...
The dazzling promises of AI systems to augment humans in various tasks hinge on whether humans can a...
Abstract If artificial intelligence (AI) is to help solve individual, societal and global problems, ...
Recent work has shown the potential benefit of selective prediction systems that can learn to defer ...