Distributionally Robust Logistic Regression
Abadeh, Soroosh Shafieezadeh, Esfahani, Peyman Mohajerin Mohajerin, Kuhn, Daniel
–Neural Information Processing Systems
This paper proposes a distributionally robust approach to logistic regression. We use the Wasserstein distance to construct a ball in the space of probability distributions centered at the uniform distribution on the training samples. If the radius of this Wasserstein ball is chosen judiciously, we can guarantee that it contains the unknown data-generating distribution with high confidence. We then formulate a distributionally robust logistic regression model that minimizes a worst-case expected logloss function, where the worst case is taken over all distributions in the Wasserstein ball. We prove that this optimization problem admits a tractable reformulation and encapsulates the classical as well as the popular regularized logistic regression problems as special cases.
Neural Information Processing Systems
Feb-14-2020, 09:40:59 GMT