This dissertation focuses on the integration of machine learning and optimization. Specifically, novel machine learning-based frameworks are proposed to help solve a broad range of well-known operations research problems to reduce the solution times. The first study presents a bidirectional Long Short-Term Memory framework to learn optimal solutions to sequential decision-making problems. Computational results show that the framework significantly reduces the solution time of benchmark capacitated lot-sizing problems without much loss in feasibility and optimality. Also, models trained using shorter planning horizons can successfully predict the optimal solution of the instances with longer planning horizons. For the hardest data set, the p...
Practitioners of operations research often consider difficult variants of well-known optimization pr...
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
We propose an efficient machine learning algorithm for two-stage stochastic programs. This machine l...
This dissertation focuses on the integration of machine learning and optimization. Specifically, nov...
In this study, we present a deep learning-optimization framework to tackle dynamic mixed-integer pro...
There has been a significant proliferation of research in and application of machine learning and di...
The focus of this thesis is on solving a sequence of optimization problems that change over time in ...
Combinatorial optimization problems (COPs) are an important branch of mathematical optimization. It ...
Algorithmic Framework for Improving Heuristics in Stochastic, Stage-Wise Optimization Problems ...
The focus of this senior thesis is applying different machine learning optimization algorithms to di...
This dissertation work presents various approaches toward accelerating training of deep neural netwo...
Nowadays, the increase in data acquisition and availability and complexity around optimization make ...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
The interplay between optimization and machine learning is one of the most important developments in...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Practitioners of operations research often consider difficult variants of well-known optimization pr...
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
We propose an efficient machine learning algorithm for two-stage stochastic programs. This machine l...
This dissertation focuses on the integration of machine learning and optimization. Specifically, nov...
In this study, we present a deep learning-optimization framework to tackle dynamic mixed-integer pro...
There has been a significant proliferation of research in and application of machine learning and di...
The focus of this thesis is on solving a sequence of optimization problems that change over time in ...
Combinatorial optimization problems (COPs) are an important branch of mathematical optimization. It ...
Algorithmic Framework for Improving Heuristics in Stochastic, Stage-Wise Optimization Problems ...
The focus of this senior thesis is applying different machine learning optimization algorithms to di...
This dissertation work presents various approaches toward accelerating training of deep neural netwo...
Nowadays, the increase in data acquisition and availability and complexity around optimization make ...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
The interplay between optimization and machine learning is one of the most important developments in...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Practitioners of operations research often consider difficult variants of well-known optimization pr...
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
We propose an efficient machine learning algorithm for two-stage stochastic programs. This machine l...