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Active Learning for a Recursive Non-Additive Emulator for Multi-Fidelity Computer Experiments

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DataCite Commons2024-09-17 更新2024-08-19 收录
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https://tandf.figshare.com/articles/dataset/Active_Learning_for_a_Recursive_Non-Additive_Emulator_for_Multi-Fidelity_Computer_Experiments/26206881/1
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Computer simulations have become essential for analyzing complex systems, but high-fidelity simulations often come with significant computational costs. To tackle this challenge, multi-fidelity computer experiments have emerged as a promising approach that leverages both low-fidelity and high-fidelity simulations, enhancing both the accuracy and efficiency of the analysis. In this article, we introduce a new and flexible statistical model, the <i>Recursive Non-Additive (RNA) emulator</i>, that integrates the data from multi-fidelity computer experiments. Unlike conventional multi-fidelity emulation approaches that rely on an additive auto-regressive structure, the proposed RNA emulator recursively captures the relationships between multi-fidelity data using Gaussian process priors without making the additive assumption, allowing the model to accommodate more complex data patterns. Importantly, we derive the posterior predictive mean and variance of the emulator, which can be efficiently computed in a closed-form manner, leading to significant improvements in computational efficiency. Additionally, based on this emulator, we introduce four active learning strategies that optimize the balance between accuracy and simulation costs to guide the selection of the fidelity level and input locations for the next simulation run. We demonstrate the effectiveness of the proposed approach in a suite of synthetic examples and a real-world problem. An R package RNAmf for the proposed methodology is provided on CRAN.
提供机构:
Taylor & Francis
创建时间:
2024-07-08
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