MLLGFeb 8, 2021

Active learning for distributionally robust level-set estimation

arXiv:2102.04000v116 citations
Originality Incremental advance
AI Analysis

This work provides a method for engineers and designers to identify robust design parameters for systems with high-cost black-box functions and uncertain environmental conditions, which is an incremental improvement over existing methods.

This paper addresses the problem of identifying design variables for a black-box function that remain robust under environmental variations, even when the environmental distribution is unknown. They define a Distributionally Robust Probability Threshold Robustness (DRPTR) measure and propose an active learning method to efficiently identify the region where DRPTR exceeds a desired probability, outperforming existing methods in numerical experiments.

Many cases exist in which a black-box function $f$ with high evaluation cost depends on two types of variables $\bm x$ and $\bm w$, where $\bm x$ is a controllable \emph{design} variable and $\bm w$ are uncontrollable \emph{environmental} variables that have random variation following a certain distribution $P$. In such cases, an important task is to find the range of design variables $\bm x$ such that the function $f(\bm x, \bm w)$ has the desired properties by incorporating the random variation of the environmental variables $\bm w$. A natural measure of robustness is the probability that $f(\bm x, \bm w)$ exceeds a given threshold $h$, which is known as the \emph{probability threshold robustness} (PTR) measure in the literature on robust optimization. However, this robustness measure cannot be correctly evaluated when the distribution $P$ is unknown. In this study, we addressed this problem by considering the \textit{distributionally robust PTR} (DRPTR) measure, which considers the worst-case PTR within given candidate distributions. Specifically, we studied the problem of efficiently identifying a reliable set $H$, which is defined as a region in which the DRPTR measure exceeds a certain desired probability $α$, which can be interpreted as a level set estimation (LSE) problem for DRPTR. We propose a theoretically grounded and computationally efficient active learning method for this problem. We show that the proposed method has theoretical guarantees on convergence and accuracy, and confirmed through numerical experiments that the proposed method outperforms existing methods.

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