Active learning of Gaussian process (GP) surrogates has been useful for optimizing experimental designs for physical/computer simulation experiments, and for steering data acquisition schemes in machine learning. In this paper, we develop a method for active learning of piecewise, Jump GP surrogates. Jump GPs are continuous within, but discontinuous across, regions of a design space, as required for applications spanning autonomous materials design, configuration of smart factory systems, and many others. Although our active learning heuristics are appropriated from strategies originally designed for ordinary GPs, we demonstrate that additionally accounting for model bias, as opposed to the usual model uncertainty, is essential in the Jump GP context. Toward that end, we develop an estimator for bias and variance of Jump GP models. Illustrations, and evidence of the advantage of our proposed methods, are provided on a suite of synthetic benchmarks, and real-simulation experiments of varying complexity.
翻译:主动学习高斯过程(GP)代孕器对于优化物理/计算机模拟实验实验的实验设计以及指导机器学习的数据采集计划是有用的。 在本文中,我们开发了一种方法,用于积极学习小件(跳跃GP)代孕器。跳跃GP是设计空间范围内连续的,但跨区域不连续的,这是应用包括自主材料设计、智能工厂系统配置和许多其他应用所需要的。虽然我们积极的学习超常是从最初为普通GP设计的策略中划拨的,但我们证明,在跳动GP背景下,与通常的模式不确定性相比,进一步计算模型偏差是不可或缺的。为此,我们开发了跳动GP模型偏差和差异的估测器。我们拟议方法的优势在一套合成基准和复杂程度不同的实际模拟实验中得到了说明和证据。