Discrete black-box optimization problems are challenging for model-based optimization (MBO) algorithms, such as Bayesian optimization, due to the size of the search space and the need to satisfy combinatorial constraints. In particular, these methods require repeatedly solving a complex discrete global optimization problem in the inner loop, where popular heuristic inner-loop solvers introduce approximations and are difficult to adapt to combinatorial constraints. In response, we propose NN+MILP, a general discrete MBO framework using piecewise-linear neural networks as surrogate models and mixed-integer linear programming (MILP) to optimize the acquisition function. MILP provides optimality guarantees and a versatile declarative language f...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
Bayesian Optimization (BO) is an effective approach for global optimization of black-box functions w...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
Tree ensembles can be well-suited for black-box optimization tasks such as algorithm tuning and neur...
In this paper, we develop a new algorithmic framework to solve black-box problems with integer varia...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Mixed Integer Linear Programs (MILP) are well known to be NP-hard (Non-deterministic Polynomial-time...
In this paper, a novel trust-region-based surrogate-assisted optimization method, called CBOILA (Con...
Mixed-integer model predictive control (MI-MPC) can be a powerful tool for modeling hybrid control s...
Black-box optimization (BBO) problems occur frequently in many engineering and scientific discipline...
In this paper, we present a pure-Python open-source library, called PyPop7, for black-box optimizati...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
Bayesian Optimization (BO) is an effective approach for global optimization of black-box functions w...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
Tree ensembles can be well-suited for black-box optimization tasks such as algorithm tuning and neur...
In this paper, we develop a new algorithmic framework to solve black-box problems with integer varia...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Mixed Integer Linear Programs (MILP) are well known to be NP-hard (Non-deterministic Polynomial-time...
In this paper, a novel trust-region-based surrogate-assisted optimization method, called CBOILA (Con...
Mixed-integer model predictive control (MI-MPC) can be a powerful tool for modeling hybrid control s...
Black-box optimization (BBO) problems occur frequently in many engineering and scientific discipline...
In this paper, we present a pure-Python open-source library, called PyPop7, for black-box optimizati...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...