Bridging Multicalibration and Out-of-distribution Generalization Beyond Covariate Shift
–Neural Information Processing Systems
We establish a new model-agnostic optimization framework for out-of-distribution generalization via multicalibration, a criterion that ensures a predictor is calibrated across a family of overlapping groups. Multicalibration is shown to be associated with robustness of statistical inference under covariate shift. We further establish a link between multicalibration and robustness for prediction tasks both under and beyond covariate shift. We accomplish this by extending multicalibration to incorporate grouping functions that consider covariates and labels jointly. This leads to an equivalence of the extended multicalibration and invariance, an objective for robust learning in existence of concept shift. We show a linear structure of the grouping function class spanned by density ratios, resulting in a unifying framework for robust learning by designing specific grouping functions.
Neural Information Processing Systems
Mar-23-2025, 08:30:51 GMT
- Country:
- North America > United States
- California (0.28)
- Pennsylvania > Allegheny County
- Pittsburgh (0.14)
- North America > United States
- Genre:
- Research Report > Experimental Study (1.00)
- Technology:
- Information Technology > Artificial Intelligence
- Machine Learning > Neural Networks (0.67)
- Representation & Reasoning > Optimization (0.87)
- Vision (0.92)
- Information Technology > Artificial Intelligence