Machine learning components commonly appear in larger decision-making pipelines; however, the model training process typically focuses only on a loss that measures average accuracy between predicted values and ground truth values. Decision-focused learning explicitly integrates the downstream decision problem when training the predictive model, in order to optimize the quality of decisions induced by the predictions. It has been successfully applied to several limited combinatorial problem classes, such as those that can be expressed as linear programs (LP), and submodular optimization. However, these previous applications have uniformly focused on problems with simple constraints. Here, we enable decision-focused learning for the broad cla...
Mixed-integer programs (MIPs) involving logical implications modeled through big-M coefficients are ...
Cut selection is a subroutine used in all modern mixed-integer linear programming solvers with the g...
Decision-Focused Learning (DFL) is a paradigm for tailoring a predictive model to a downstream optim...
Creating impact in real-world settings requires artificial intelligence techniques to span the full ...
A recent development in the field of discrete optimization is the combined use of (binary) decision ...
Abstract: As a new margin-based classier, -learning shows great potential for high accuracy. However...
We present in this paper a new approach that uses supervised machine learning techniques to improve ...
<p>Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard dis...
Modern Mixed-Integer Programming (MIP) solvers exploit a rich arsenal of tools to attack hard proble...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
The design of strategies for branching in Mixed Integer Programming (MIP) is guided by cycles of par...
MIPLearn is an extensible framework for Learning-Enhanced Mixed-Integer Optimization, an approach ta...
MIPLearn is an extensible framework for solving discrete optimization problems using a combination o...
A popular method in machine learning for supervised classification is a decision tree. In this work ...
In the last years decision-focused learning framework, also known as predict-and-optimize, have rece...
Mixed-integer programs (MIPs) involving logical implications modeled through big-M coefficients are ...
Cut selection is a subroutine used in all modern mixed-integer linear programming solvers with the g...
Decision-Focused Learning (DFL) is a paradigm for tailoring a predictive model to a downstream optim...
Creating impact in real-world settings requires artificial intelligence techniques to span the full ...
A recent development in the field of discrete optimization is the combined use of (binary) decision ...
Abstract: As a new margin-based classier, -learning shows great potential for high accuracy. However...
We present in this paper a new approach that uses supervised machine learning techniques to improve ...
<p>Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard dis...
Modern Mixed-Integer Programming (MIP) solvers exploit a rich arsenal of tools to attack hard proble...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
The design of strategies for branching in Mixed Integer Programming (MIP) is guided by cycles of par...
MIPLearn is an extensible framework for Learning-Enhanced Mixed-Integer Optimization, an approach ta...
MIPLearn is an extensible framework for solving discrete optimization problems using a combination o...
A popular method in machine learning for supervised classification is a decision tree. In this work ...
In the last years decision-focused learning framework, also known as predict-and-optimize, have rece...
Mixed-integer programs (MIPs) involving logical implications modeled through big-M coefficients are ...
Cut selection is a subroutine used in all modern mixed-integer linear programming solvers with the g...
Decision-Focused Learning (DFL) is a paradigm for tailoring a predictive model to a downstream optim...