Lifted Coefficient of Determination: Fast model-free prediction intervals and likelihood-free model comparison

Abstract
We propose the , and derive model-free prediction intervals that become tighter as the correlation between predictions and observations increases. These intervals motivate the , a model comparison criterion for arbitrary loss functions in prediction-based settings, e.g., regression, classification or counts. We extend the prediction intervals to more general error distributions, and propose a fast model-free outlier detection algorithm for regression. Finally, we illustrate the framework via numerical experiments.
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