AI RESEARCH
Decision-Focused Learning via Tangent-Space Projection of Prediction Error
arXiv CS.LG
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ArXi:2605.01361v1 Announce Type: new Decision-Focused Learning (DFL) trains predictors to improve downstream decision quality, but computing regret gradients typically requires differentiating through solvers or relying on surrogate losses, which can be computationally expensive or deviate from the true objective. We show that, under standard regularity with locally stable active constraints, the regret gradient admits a closed-form geometric characterization, equivalent to the prediction error projected onto the tangent space of active constraints, scaled by local curvature.