We propose a general framework for machine learning based optimization under uncertainty. Our approach replaces the complex forward model by a surrogate, e.g., a neural network, which is learned simultaneously in a one-shot sense when solving the optimal control problem. Our approach relies on a reformulation of the problem as a penalized empirical risk minimization problem for which we provide a consistency analysis in terms of large data and increasing penalty parameter. To solve the resulting problem, we suggest a stochastic gradient method with adaptive control of the penalty parameter and prove convergence under suitable assumptions on the surrogate model. Numerical experiments illustrate the results for linear and nonlinear surrogate ...
We investigate the adaptive robust control framework for portfolio optimization and loss-based hedgi...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
In the first part of the thesis, it is given an introduction to the most important concepts and resu...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
One of the main objectives of science and engineering is to predict the future state of the world --...
One of the main goal of Artificial Intelligence is to develop models capable of providing valuable p...
The aim of the talk is to discuss the role of stochastic optimization techniques in designing learni...
© 2018 Curran Associates Inc.All rights reserved. We consider the optimization of an uncertain objec...
It is fair to say that in many real world decision problems the underlying models cannot be accurate...
This work proposes a way to align statistical modeling with decision making. We provide a method tha...
In the recent era, multi-criteria decision making under uncertainty is gaining importance due to its...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
The interplay between optimization and machine learning is one of the most important developments in...
Model-based reinforcement learning algorithms tend to achieve higher sample efficiency than model-fr...
We investigate the adaptive robust control framework for portfolio optimization and loss-based hedgi...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
In the first part of the thesis, it is given an introduction to the most important concepts and resu...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
One of the main objectives of science and engineering is to predict the future state of the world --...
One of the main goal of Artificial Intelligence is to develop models capable of providing valuable p...
The aim of the talk is to discuss the role of stochastic optimization techniques in designing learni...
© 2018 Curran Associates Inc.All rights reserved. We consider the optimization of an uncertain objec...
It is fair to say that in many real world decision problems the underlying models cannot be accurate...
This work proposes a way to align statistical modeling with decision making. We provide a method tha...
In the recent era, multi-criteria decision making under uncertainty is gaining importance due to its...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
The interplay between optimization and machine learning is one of the most important developments in...
Model-based reinforcement learning algorithms tend to achieve higher sample efficiency than model-fr...
We investigate the adaptive robust control framework for portfolio optimization and loss-based hedgi...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
In the first part of the thesis, it is given an introduction to the most important concepts and resu...