Inverse optimization—determining parameters of an optimization problem that render a given solution optimal—has received increasing attention in recent years. Although …
We propose a flexible gradient-based framework for learning linear programs from optimal decisions. Linear programs are often specified by hand, using prior knowledge of relevant …
Consider a problem where a set of feasible observations are provided by an expert, and a cost function exists that characterizes which of the observations dominate the others and are …
TCY Chan, M Eberg, K Forster… - Management …, 2022 - pubsonline.informs.org
Clinical pathways outline standardized processes in the delivery of care for a specific disease. Patient journeys through the healthcare system, however, can deviate substantially …
Z Shahmoradi, T Lee - Operations research, 2022 - pubsonline.informs.org
Inverse linear programming (LP) has received increasing attention because of its potential to infer efficient optimization formulations that can closely replicate the behavior of a complex …
R Gupta, Q Zhang - Computers & Chemical Engineering, 2023 - Elsevier
Decision-making problems are commonly formulated as optimization problems, which are then solved to make optimal decisions. In this work, we consider the inverse problem where …
F Kellner, S Utz - Journal of Cleaner Production, 2024 - Elsevier
Throughout many societies around the globe, there is growing awareness of the urgent need for the transition towards a sustainable economy. Research shows that buying firms …
S Han, L Ma - Frontiers in Medicine, 2022 - frontiersin.org
Health care delivery in China is in transition from reactive and doctor-centered to preventative and patient-centered. The challenge for the reform is to account for the needs of …
Given a set of observations generated by an optimization process, the goal of inverse optimization is to determine likely parameters of that process. We cast inverse optimization …