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Bayesian design of experiments selects experimental runs by maximising a utility function — typically the expected information gain — computed over prior beliefs about model parameters. Unlike classical design, which optimizes algebraic criteria such as D-optimality under fixed assumptions, Bayesian DOE incorporates prior knowledge and uncertainty about the system, yielding designs that are optimal in expectation across all plausible parameter values.

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Allikad

  1. Chaloner, K., & Verdinelli, I. (1995). Bayesian Experimental Design: A Review. Statistical Science, 10(3), 273–304. DOI: 10.1214/ss/1177009939
  2. Ryan, E. G., Drovandi, C. C., McGree, J. M., & Pettitt, A. N. (2016). A Review of Modern Computational Algorithms for Bayesian Optimal Design. International Statistical Review, 84(1), 128–154. DOI: 10.1111/insr.12107

Kuidas sellele lehele viidata

ScholarGate. (2026, June 3). Bayesian Optimal Design of Experiments. ScholarGate. https://scholargate.app/et/experimental-design/bayesian-design-of-experiments

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Sellele viitavad

ScholarGateBayesian Design of Experiments (Bayesian Optimal Design of Experiments). Loetud 2026-06-17 aadressilt https://scholargate.app/et/experimental-design/bayesian-design-of-experiments · Andmestik: https://doi.org/10.5281/zenodo.20539026