Poster
Decision-Focused Learning: Through the Lens of Learning to Rank
Jayanta Mandi · VĂctor Bucarey · Maxime Mulamba Ke Tchomba · Tias Guns
Hall E #739
Keywords: [ OPT: Control and Optimization ] [ OPT: Optimization and Learning under Uncertainty ] [ OPT: Learning for Optimization ] [ OPT: Discrete and Combinatorial Optimization ]
In the last years decision-focused learning framework, also known as predict-and-optimize, have received increasing attention. In this setting, the predictions of a machine learning model are used as estimated cost coefficients in the objective function of a discrete combinatorial optimization problem for decision making. Decision-focused learning proposes to train the ML models, often neural network models, by directly optimizing the quality of decisions made by the optimization solvers. Based on a recent work that proposed a noise contrastive estimation loss over a subset of the solution space, we observe that decision-focusedlearning can more generally be seen as a learning-to-rank problem, where the goal is to learn an objective function that ranks the feasible points correctly. This observation is independent of the optimization method used and of the form of the objective function. We develop pointwise, pairwise and listwise ranking loss functions, which can be differentiated in closed form given a subset of solutions. We empirically investigate the quality of our generic methods compared to existing decision-focused learning approaches with competitive results. Furthermore, controlling the subset of solutions allows controlling the runtime considerably, with limited effect on regret.