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arxiv: 2002.01321 · v3 · pith:ERAGFCI5new · submitted 2020-02-04 · 📊 stat.ME

Analyzing Stochastic Computer Models: A Review with Opportunities

classification 📊 stat.ME
keywords computermodelsstochasticreviewanalyzingmethodspractitionersstatistical
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In modern science, computer models are often used to understand complex phenomena, and a thriving statistical community has grown around analyzing them. This review aims to bring a spotlight to the growing prevalence of stochastic computer models -- providing a catalogue of statistical methods for practitioners, an introductory view for statisticians (whether familiar with deterministic computer models or not), and an emphasis on open questions of relevance to practitioners and statisticians. Gaussian process surrogate models take center stage in this review, and these, along with several extensions needed for stochastic settings, are explained. The basic issues of designing a stochastic computer experiment and calibrating a stochastic computer model are prominent in the discussion. Instructive examples, with data and code, are used to describe the implementation of, and results from, various methods.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. All Emulators are Wrong, Many are Useful, and Some are More Useful Than Others: A Reproducible Comparison of Computer Model Surrogates

    stat.CO 2025-12 accept novelty 7.0

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