Probabilistic Approach to Black-Box Binary Optimization with Budget Constraints: Application to Sensor Placement
Ahmed Attia

TL;DR
This paper introduces a probabilistic method for binary black-box optimization with budget constraints, using conditional Bernoulli distributions to efficiently find optimal solutions without tuning regularization parameters.
Contribution
It develops a novel probabilistic framework employing conditional Bernoulli distributions to handle constraints directly, reducing computational cost and avoiding parameter tuning in binary optimization.
Findings
Effective in reducing computational cost compared to soft constraints
Successfully applied to sensor placement in parameter identification
Validated on bilinear binary optimization problem
Abstract
We present a fully probabilistic approach for solving binary optimization problems with black-box objective functions and with budget constraints. In the probabilistic approach, the optimization variable is viewed as a random variable and is associated with a parametric probability distribution. The original optimization problem is replaced with an optimization over the expected value of the original objective, which is then optimized over the probability distribution parameters. The resulting optimal parameter (optimal policy) is used to sample the binary space to produce estimates of the optimal solution(s) of the original binary optimization problem. The probability distribution is chosen from the family of Bernoulli models because the optimization variable is binary. The optimization constraints generally restrict the feasibility region. This can be achieved by modeling the random…
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Taxonomy
TopicsManufacturing Process and Optimization
