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베이지안 다목적 최적화×불확실성 하에서 다중 상충 목표를 최적화하는 확률적 다목표 최적화×
분야시뮬레이션시뮬레이션
계열Process / pipelineProcess / pipeline
기원 연도2006-20161990s–2000s
창시자Emmerich, M.; Svenson, J.; and related Gaussian process optimization communityVarious (Fonseca, Fleming, Deb, Zitzler, and others)
유형Surrogate-model-assisted multi-objective optimizerStochastic metaheuristic optimization
원전Svenson, J., Santner, T. (2016). Multiobjective optimization of expensive-to-evaluate deterministic computer simulator models. Computational Statistics & Data Analysis, 94, 250-264. DOI ↗Deb, K. (2001). Multi-Objective Optimization Using Evolutionary Algorithms. Wiley, Chichester. ISBN: 9780471873396
별칭BMOO, Bayesian MOO, Multi-objective Bayesian optimization, MOBOSMOO, Stochastic MOO, Multi-objective optimization under uncertainty, Robust multi-objective optimization
관련35
요약Bayesian Multi-Objective Optimization (BMOO/MOBO) uses Gaussian process surrogate models to approximate multiple expensive objective functions and guides the search toward the Pareto frontier with minimal real evaluations. By quantifying prediction uncertainty at each candidate point, it balances exploration of unknown regions against exploitation of promising solutions, making it especially powerful when each function evaluation is computationally or experimentally costly.Stochastic Multi-Objective Optimization (SMOO) is a class of methods that simultaneously optimizes two or more conflicting objectives when parameters, costs, or constraints are uncertain or random. Rather than a single optimal solution, it produces a Pareto front of non-dominated solutions, each representing a different balance among objectives under the modeled uncertainty.
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