Robustness to distributional shift is one of the key challenges of contemporary machine learning. Attaining such robustness is the goal of distributionally robust optimization, which seeks a solution to an optimization problem that is worst-case robust under a specified distributional shift of an uncontrolled covariate. In this paper, we study such a problem when the distributional shift is measured via the maximum mean discrepancy (MMD). For the setting of zeroth-order, noisy optimization, we present a novel distributionally robust Bayesian optimization algorithm (DRBO). Our algorithm provably obtains sub-linear robust regret in various settings that differ in how the uncertain covariate is observed. We demonstrate the robust performance o...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
Distributionally robust optimization (DRO) has shown lot of promise in providing robustness in learn...
We study the out-of-sample properties of robust empirical optimization and develop a theory for data...
The study of robustness has received much attention due to its inevitability in data-driven settings...
Motivated by data-driven decision making and sampling problems, we investigate probabilistic interpr...
Data-driven stochastic programming aims to find a procedure that transforms time series data to a ne...
We propose a novel, theoretically-grounded, acquisition function for batch Bayesian optimisation inf...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
Traditional stochastic optimization assumes that the probability distribution of uncertainty is know...
We study stochastic programs where the decision maker cannot observe the distribution of the exogeno...
Training models that perform well under distribution shifts is a central challenge in machine learni...
Machine learning systems based on minimizing average error have been shown to perform inconsistently...
In this paper, we propose a computationally tractable and provably convergent algorithm for robust o...
Machine learning algorithms with empirical risk minimization are vulnerable under distributional shi...
We propose a formulation of a distributionally robust approach to model certain structural informat...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
Distributionally robust optimization (DRO) has shown lot of promise in providing robustness in learn...
We study the out-of-sample properties of robust empirical optimization and develop a theory for data...
The study of robustness has received much attention due to its inevitability in data-driven settings...
Motivated by data-driven decision making and sampling problems, we investigate probabilistic interpr...
Data-driven stochastic programming aims to find a procedure that transforms time series data to a ne...
We propose a novel, theoretically-grounded, acquisition function for batch Bayesian optimisation inf...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
Traditional stochastic optimization assumes that the probability distribution of uncertainty is know...
We study stochastic programs where the decision maker cannot observe the distribution of the exogeno...
Training models that perform well under distribution shifts is a central challenge in machine learni...
Machine learning systems based on minimizing average error have been shown to perform inconsistently...
In this paper, we propose a computationally tractable and provably convergent algorithm for robust o...
Machine learning algorithms with empirical risk minimization are vulnerable under distributional shi...
We propose a formulation of a distributionally robust approach to model certain structural informat...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
Distributionally robust optimization (DRO) has shown lot of promise in providing robustness in learn...
We study the out-of-sample properties of robust empirical optimization and develop a theory for data...