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A0662
Title: Multi-fidelity surrogate modeling with confidence: Stacking experimental design with cost complexity guarantees Authors:  Chih-Li Sung - Michigan State University (United States) [presenting]
Abstract: In an era where scientific experimentation is costly, multi-fidelity emulation (i.e., predictive modeling using data of multiple fidelities, or accuracies) is becoming a crucial tool for scientific discovery. Such emulators allow experimenters to maximize predictive power and thus scientific inference given an experimental budget. There has, however, been little work exploring the problems of design and sample size determination for multi-fidelity emulation, both of which are critical for cost-efficient predictive modeling. We thus propose a novel experimental design framework that addresses both problems under a novel multi-level emulator model. We prove a novel complexity theorem that shows, under the proposed sequential design, that the resulting emulator achieves a prediction accuracy given a computational cost. We then demonstrate the effectiveness of the proposed sequential design in a suite of simulation experiments and an application to finite-element analysis.