Bayesian approaches developed to solve the optimal design of sequential experiments are mathematically elegant but computationally challenging. Recently, techniques using amortization have been proposed to make these Bayesian approaches practical, by training a parameterized policy that proposes designs efficiently at deployment time. However, these methods may not sufficiently explore the design space, require access to a differentiable probabilistic model and can only optimize over continuous design spaces. Here, we address these limitations by showing that the problem of optimizing policies can be reduced to solving a Markov decision process (MDP). We solve the equivalent MDP with modern deep reinforcement learning techniques. Our experi...
Markov Decision Processes are a mathematical framework widely used for stochastic optimization and c...
We address the problem of Bayesian reinforcement learning using efficient model-based online plannin...
Optimal sampling in spatial random fields is a complex problem, which mobilizes several research fie...
Optimal experimental design (OED) is a statistical approach aimed at designing experiments in order ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
The field of optimal experimental design uses mathematical techniques to determine experiments that ...
Reinforcement Learning (RL) is a computational approach to reward-driven learning in sequential deci...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Solving Markov decision processes (MDPs) efficiently is challenging in many cases, for example, when...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
In the predict-then-optimize framework, the objective is to train a predictive model, mapping from e...
Markov Decision Processes are a mathematical framework widely used for stochastic optimization and c...
We address the problem of Bayesian reinforcement learning using efficient model-based online plannin...
Optimal sampling in spatial random fields is a complex problem, which mobilizes several research fie...
Optimal experimental design (OED) is a statistical approach aimed at designing experiments in order ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
The field of optimal experimental design uses mathematical techniques to determine experiments that ...
Reinforcement Learning (RL) is a computational approach to reward-driven learning in sequential deci...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Solving Markov decision processes (MDPs) efficiently is challenging in many cases, for example, when...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
In the predict-then-optimize framework, the objective is to train a predictive model, mapping from e...
Markov Decision Processes are a mathematical framework widely used for stochastic optimization and c...
We address the problem of Bayesian reinforcement learning using efficient model-based online plannin...
Optimal sampling in spatial random fields is a complex problem, which mobilizes several research fie...