Feb. 5, 2024, 3:44 p.m. | Grigorii Veviurko Wendelin B\"ohmer Mathijs de Weerdt

cs.LG updates on arXiv.org arxiv.org

Predict and optimize is an increasingly popular decision-making paradigm that employs machine learning to predict unknown parameters of optimization problems. Instead of minimizing the prediction error of the parameters, it trains predictive models using task performance as a loss function. The key challenge to train such models is the computation of the Jacobian of the solution of the optimization problem with respect to its parameters. For linear problems, this Jacobian is known to be zero or undefined; hence, approximations are …

challenge cs.lg decision error function gradient key loss machine machine learning making math.oc optimization paradigm parameters performance popular prediction predictive predictive models the key train trains

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