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Calibrated Reliable Regression using Maximum Mean Discrepancy (2006.10255v2)

Published 18 Jun 2020 in cs.LG and stat.ML

Abstract: Accurate quantification of uncertainty is crucial for real-world applications of machine learning. However, modern deep neural networks still produce unreliable predictive uncertainty, often yielding over-confident predictions. In this paper, we are concerned with getting well-calibrated predictions in regression tasks. We propose the calibrated regression method using the maximum mean discrepancy by minimizing the kernel embedding measure. Theoretically, the calibration error of our method asymptotically converges to zero when the sample size is large enough. Experiments on non-trivial real datasets show that our method can produce well-calibrated and sharp prediction intervals, which outperforms the related state-of-the-art methods.

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Authors (3)
  1. Peng Cui (116 papers)
  2. Wenbo Hu (55 papers)
  3. Jun Zhu (426 papers)
Citations (43)

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