Accurate uncertainty estimates can significantly improve the performance of iterative design of experiments, as in Sequential and Reinforcement learning. For many such problems in engineering and the physical sciences, the design task depends on multiple correlated model outputs as objectives and/or constraints. To better solve these problems, we propose a recalibrated bootstrap method to generate multivariate prediction intervals for bagged models and show that it is well-calibrated. We apply the recalibrated bootstrap to a simulated sequential learning problem with multiple objectives and show that it leads to a marked decrease in the number of iterations required to find a satisfactory candidate. This indicates that the recalibrated bootstrap could be a valuable tool for practitioners using machine learning to optimize systems with multiple competing targets.
翻译:准确的不确定性估计可以大大改善反复设计实验的性能,如在序列和强化学习中那样。对于工程和物理科学的许多这类问题,设计任务取决于作为目标和(或)制约因素的多重相关模型产出。为了更好地解决这些问题,我们建议了一种调整式靴套方法,以生成包装模型的多变量预测间隔,并显示其校准性能良好。我们将重新校准式靴套用于具有多个目标的模拟连续学习问题,并表明它导致找到满意候选人所需的迭代数量明显减少。这表明重新校准式靴套可以成为操作者利用机器学习优化具有多个相竞目标的系统的宝贵工具。