While Gaussian processes are a mainstay for various engineering and scientific applications, the uncertainty estimates don't satisfy frequentist guarantees, and can be miscalibrated in practice. State-of-the-art approaches for designing calibrated models rely on inflating the Gaussian process posterior variance, which yields confidence intervals that are potentially too coarse. To remedy this, we present a calibration approach that generates predictive quantiles using a computation inspired by the vanilla Gaussian process posterior variance, but using a different set of hyperparameters, chosen to satisfy an empirical calibration constraint. This results in a calibration approach that is considerably more flexible than existing approaches. Our approach is shown to yield a calibrated model under reasonable assumptions. Furthermore, it outperforms existing approaches not only when employed for calibrated regression, but also to inform the design of Bayesian optimization algorithms.
翻译:虽然高斯进程是各种工程和科学应用的支柱,但不确定性估计并不能满足常客主义的保证,而且在实践中可能存在错误的校准。设计校准模型的最先进方法依赖于加压高斯进程后方差异,从而产生可能过于粗糙的信心间隔。为了纠正这一点,我们提出了一个校准方法,利用由香草高斯进程后方差异所启发的计算方法生成预测量,但使用一套不同的超参数,选择用来满足实证校准限制。这导致校准方法比现有方法灵活得多。我们的方法显示在合理假设下产生校准模型。此外,它不仅在校准回归时,还超越了现有方法,并且为贝叶斯最优化算法的设计提供信息。