Recently, probabilistic methods and statistical learning theory have been shown to provide approximate solutions to `difficult' control problems. Unfortunately, the number of samples required in order to guarantee stringent performance levels may be prohibitively large. This paper introduces bootstrap learning methods and the concept of stopping times to drastically reduce the bound on the number of samples required to achieve a performance level. We then apply these results to obtain more efficient algorithms which probabilistically guarantee stability and robustness levels when designing controllers for uncertain systems
Abstract. We consider the problem of determining a model for a given system on the basis of experime...
The main objective of this book is to introduce the reader to the fundamentals of the area of probab...
Reinforcement learning (RL) has demonstrated impressive performance in various domains such as video...
Technical ReportRecently, probabilistic methods and statistical learning theory have been shown to p...
It has recently become clear that many control problems are too difficult to admit analytic solution...
This paper shows how probabilistic methods and statistical learning theory can provide approximate s...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
he topic of the present article is the use of randomized algo- T rithms to solve some problems in co...
Despite the recent widespread success of machine learning, we still do not fully understand its fund...
In recent years, there has been a growing interest in developing statistical learning methods to pro...
In this paper we discuss how statistical learning methods may be used to obtain probabilistic robust...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
The presence of uncertainty in a system description has always been a critical issue in control. The...
Learning algorithms play an ever increasing role in modern engineering solutions. However, despite m...
In this paper, we study randomized methods for feedback design of uncertain systems. The first contr...
Abstract. We consider the problem of determining a model for a given system on the basis of experime...
The main objective of this book is to introduce the reader to the fundamentals of the area of probab...
Reinforcement learning (RL) has demonstrated impressive performance in various domains such as video...
Technical ReportRecently, probabilistic methods and statistical learning theory have been shown to p...
It has recently become clear that many control problems are too difficult to admit analytic solution...
This paper shows how probabilistic methods and statistical learning theory can provide approximate s...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
he topic of the present article is the use of randomized algo- T rithms to solve some problems in co...
Despite the recent widespread success of machine learning, we still do not fully understand its fund...
In recent years, there has been a growing interest in developing statistical learning methods to pro...
In this paper we discuss how statistical learning methods may be used to obtain probabilistic robust...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
The presence of uncertainty in a system description has always been a critical issue in control. The...
Learning algorithms play an ever increasing role in modern engineering solutions. However, despite m...
In this paper, we study randomized methods for feedback design of uncertain systems. The first contr...
Abstract. We consider the problem of determining a model for a given system on the basis of experime...
The main objective of this book is to introduce the reader to the fundamentals of the area of probab...
Reinforcement learning (RL) has demonstrated impressive performance in various domains such as video...