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Epsilon-Neighborhood Decision-Boundary Governed Estimation (EDGE) of 2D Black Box Classifier Functions

Epsilon-Neighborhood Decision-Boundary Governed Estimation (EDGE) of 2D Black Box Classifier Functions

来源:Arxiv_logoArxiv
英文摘要

Accurately estimating decision boundaries in black box systems is critical when ensuring safety, quality, and feasibility in real-world applications. However, existing methods iteratively refine boundary estimates by sampling in regions of uncertainty, without providing guarantees on the closeness to the decision boundary and also result in unnecessary exploration that is especially disadvantageous when evaluations are costly. This paper presents the Epsilon-Neighborhood Decision-Boundary Governed Estimation (EDGE), a sample efficient and function-agnostic algorithm that leverages the intermediate value theorem to estimate the location of the decision boundary of a black box binary classifier within a user-specified epsilon-neighborhood. Evaluations are conducted on three nonlinear test functions and a case study of an electric grid stability problem with uncertain renewable power injection. The EDGE algorithm demonstrates superior sample efficiency and better boundary approximation than adaptive sampling techniques and grid-based searches.

Mithun Goutham、Riccardo DalferroNucci、Stephanie Stockar、Meghna Menon、Sneha Nayak、Harshad Zade、Chetan Patel、Mario Santillo

计算技术、计算机技术

Mithun Goutham,Riccardo DalferroNucci,Stephanie Stockar,Meghna Menon,Sneha Nayak,Harshad Zade,Chetan Patel,Mario Santillo.Epsilon-Neighborhood Decision-Boundary Governed Estimation (EDGE) of 2D Black Box Classifier Functions[EB/OL].(2025-04-13)[2025-04-27].https://arxiv.org/abs/2504.09733.点此复制

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