This chapter discusses decision making under uncertainty. More specifically, it offers an overview of efficient Bayesian and distribution-free algorithms for making near-optimal sequential decisions under uncertainty about the environment. Due to the uncertainty, such algorithms must not only learn from their interaction with the environment but also perform as well as possible while learning is taking place. \ua9 2010 Springer-Verlag Berlin Heidelberg
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
Operating and interacting in an environment requires the ability to manage uncertainty and to choose...
This thesis develops novel mathematical models to make optimal sequential decisions under uncertaint...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
In this dissertation, we consider sequential optimization decision making problems, which entail mak...
When to make a decision is a key question in decision making problems characterized by uncertainty. ...
Decision-making under uncertainty is an important area of study in numerous disciplines. The variety...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
Operating and interacting in an environment requires the ability to manage uncertainty and to choose...
This thesis develops novel mathematical models to make optimal sequential decisions under uncertaint...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
In this dissertation, we consider sequential optimization decision making problems, which entail mak...
When to make a decision is a key question in decision making problems characterized by uncertainty. ...
Decision-making under uncertainty is an important area of study in numerous disciplines. The variety...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...