Can You Trust Your Model's Uncertainty? Evaluating Predictive Uncertainty Under Dataset Shift
Indexed inarxivdatacite
Abstract
Modern machine learning methods including deep learning have achieved great success in predictive accuracy for supervised learning tasks, but may still fall short in giving useful estimates of their predictive {\em uncertainty}. Quantifying uncertainty is especially critical in real-world settings, which often involve input distributions that are shifted from the training distribution due to a variety of factors including sample bias and non-stationarity. In such settings, well calibrated uncertainty estimates convey information about when a model's output should (or should not) be trusted. Many probabilistic deep learning methods, including Bayesian-and non-Bayesian methods, have been proposed in the…
Citation impact
652
total citations
- FWCI
- —
- Percentile
- —
- References
- 57
Citations per year
Authors
9Topics & keywords
Topics
Keywords
- Machine learning
- Benchmark (surveying)
- Computer science
- Artificial intelligence
- Calibration
- Bayesian probability
- Uncertainty quantification
- Probabilistic logic
UN Sustainable Development Goals
- Quality Education
No related works found for this paper.