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arxiv 2301.12162 v2 pith:VESUITIH submitted 2023-01-28 math.NA cs.NA

PROTES: Probabilistic Optimization with Tensor Sampling

classification math.NA cs.NA
keywords optimizationprotescomplexfunctionsothersprobabilisticproblemssampling
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We developed a new method PROTES for black-box optimization, which is based on the probabilistic sampling from a probability density function given in the low-parametric tensor train format. We tested it on complex multidimensional arrays and discretized multivariable functions taken, among others, from real-world applications, including unconstrained binary optimization and optimal control problems, for which the possible number of elements is up to $2^{100}$. In numerical experiments, both on analytic model functions and on complex problems, PROTES outperforms existing popular discrete optimization methods (Particle Swarm Optimization, Covariance Matrix Adaptation, Differential Evolution, and others).

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