Uncertainty Estimation based on Geometric Separation
Chouraqui, Gabriella, Cohen, Liron, Einziger, Gil, Leman, Liel
–arXiv.org Artificial Intelligence
In machine learning, accurately predicting the probability that a specific input is correct is crucial for risk management. This process, known as uncertainty (or confidence) estimation, is particularly important in mission-critical applications such as autonomous driving. In this work, we put forward a novel geometric-based approach for improving uncertainty estimations in machine learning models. Our approach involves using the geometric distance of the current input from existing training inputs as a signal for estimating uncertainty, and then calibrating this signal using standard post-hoc techniques. We demonstrate that our method leads to more accurate uncertainty estimations than recently proposed approaches through extensive evaluation on a variety of datasets and models. Additionally, we optimize our approach so that it can be implemented on large datasets in near real-time applications, making it suitable for time-sensitive scenarios.
arXiv.org Artificial Intelligence
Jan-11-2023
- Country:
- North America (0.28)
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- Research Report (1.00)
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- Information Technology > Robotics & Automation (0.34)
- Transportation > Ground (0.34)
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