Learning and reasoning in large, structured, probabilistic worlds is at the heart of artificial intelligence. Markov decision processes have become the de facto standard in modeling and solving sequential decision making problems under uncertainty. Many efficient reinforcement learning and dynamic programming techniques exist that can solve such problems. Until recently, the representational state-of-the-art in this field was based on propositional representations. However, it is hard to imagine a truly general, intelligent system that does not conceive of the world in terms of objects and their properties and relations to other objects. To this end, this book studies lifting Markov decision processes, reinforcement learning and dynamic pro...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
Recent decision-theoric planning algorithms are able to find optimal solutions in large problems, us...
Reinforcement learning is a general computational framework for learning sequential decision strate...
Markov decision processes have become the de facto standard in modeling and solving sequential decis...
Markov Decision Processes (MDPs) are a mathematical framework for modeling sequential decision probl...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
Markov decision processes capture sequential decision making under uncertainty, where an agent must ...
Recent developments in the area of relational reinforcement learning (RRL) have resulted in a numbe...
This paper deals with cognitive theories behind agent-based modeling of learning and information pro...
This chapter presents an overview of simulation-based techniques useful for solving Markov decision ...
The first part of a two-part series of papers provides a survey on recent advances in Deep Reinforce...
International audienceMarkov Decision Processes (MDPs) are a mathematical framework for modeling seq...
Recent decision-theoric planning algorithms are able to find optimal solutions in large problems, us...
People are efficient when they make decisions under uncertainty, even when their decisions have long...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
Recent decision-theoric planning algorithms are able to find optimal solutions in large problems, us...
Reinforcement learning is a general computational framework for learning sequential decision strate...
Markov decision processes have become the de facto standard in modeling and solving sequential decis...
Markov Decision Processes (MDPs) are a mathematical framework for modeling sequential decision probl...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
Markov decision processes capture sequential decision making under uncertainty, where an agent must ...
Recent developments in the area of relational reinforcement learning (RRL) have resulted in a numbe...
This paper deals with cognitive theories behind agent-based modeling of learning and information pro...
This chapter presents an overview of simulation-based techniques useful for solving Markov decision ...
The first part of a two-part series of papers provides a survey on recent advances in Deep Reinforce...
International audienceMarkov Decision Processes (MDPs) are a mathematical framework for modeling seq...
Recent decision-theoric planning algorithms are able to find optimal solutions in large problems, us...
People are efficient when they make decisions under uncertainty, even when their decisions have long...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
Recent decision-theoric planning algorithms are able to find optimal solutions in large problems, us...
Reinforcement learning is a general computational framework for learning sequential decision strate...