We study planning in relational Markov decision processes involving discrete and continuous states and actions, and an unknown number of objects. This combination of hybrid relational domains has so far not received a lot of attention. While both relational and hybrid approaches have been studied separately, planning in such domains is still challenging and often requires restrictive assumptions and approximations. We propose HYPE: a sample-based planner for hybrid relational domains that combines model-based approaches with state abstraction. HYPE samples episodes and uses the previous episodes as well as the model to approximate the Q-function. In addition, abstraction is performed for each sampled episode, this removes the complexity of ...
A longstanding goal in planning research is the ability to generalize plans developed for some set o...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
We study planning in relational Markov decision processes involving discrete and continuous states a...
We study planning in relational Markov decision processes involving discrete and continuous states a...
We study planning in relational Markov Decision Processes involving discrete and continuous states a...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Using machine learning techniques for planning is getting increasingly more important in recent year...
Using machine learning techniques for planning is getting in-creasingly more important in recent yea...
Typical approaches to relational MDPs consider only discrete variables or else discretize the contin...
One of the goals of artificial intelligence is to develop agents that learn and act in complex envir...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Artificial intelligence aims at developing agents that learn and act in complex environments. Reali...
In order to solve real-world tasks, intelligent machines need to be able to act in noisy worlds wher...
A longstanding goal in planning research is the ability to generalize plans developed for some set o...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
We study planning in relational Markov decision processes involving discrete and continuous states a...
We study planning in relational Markov decision processes involving discrete and continuous states a...
We study planning in relational Markov Decision Processes involving discrete and continuous states a...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Using machine learning techniques for planning is getting increasingly more important in recent year...
Using machine learning techniques for planning is getting in-creasingly more important in recent yea...
Typical approaches to relational MDPs consider only discrete variables or else discretize the contin...
One of the goals of artificial intelligence is to develop agents that learn and act in complex envir...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Artificial intelligence aims at developing agents that learn and act in complex environments. Reali...
In order to solve real-world tasks, intelligent machines need to be able to act in noisy worlds wher...
A longstanding goal in planning research is the ability to generalize plans developed for some set o...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...