Selecting Optimal Decisions via Distributionally Robust Nearest-Neighbor Regression
2019
This paper develops a prediction-based prescriptive model for optimal decision
making that (i) predicts the outcome under each action using a robust
nonlinear model, and (ii) adopts a randomized prescriptive policy determined
by the predicted outcomes. The predictive model combines a new regularized
regression technique, which was developed using Distributionally Robust
Optimization (DRO) with an ambiguity set constructed from the Wasserstein
metric, with the K-Nearest Neighbors (K-NN) regression, which helps to
capture the nonlinearity embedded in the data. We show theoretical results
that guarantee the out-of-sample performance of the predictive model, and
prove the optimality of the randomized policy in terms of the expected true
future outcome. We demonstrate the proposed methodology on a hypertension
dataset, showing that our prescribed treatment leads to a larger reduction in
the systolic blood pressure compared to a series of alternatives. A clinically
meaningful threshold level used to activate the randomized policy is also
derived under a sub-Gaussian assumption on the predicted outcome.
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