A significant challenge in developing planning systems for practical applications is the difficulty of acquiring the domain knowledge needed by such systems. One method for acquiring this knowledge is to learn it from plan traces, but this method typically requires a huge number of plan traces to converge. In this paper, we show that the problem with slow convergence can be circumvented by having the learner generate solution plans even before the planning domain is completely learned. Our empirical results show that these improvements reduce the size of the training set that is needed to find correct answers to a large percentage of planning problems in the test set. 1
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
Most of the available plan recognition techniques are based on the use of a plan library in order to...
Learning from past experience allows a problem solver to increase its solvability horizon from simpl...
A significant challenge in developing plan-ning systems for practical applications is the difficulty...
A great challenge in developing planning systems for practical applications is the difficulty of acq...
The process of designing hierarchical motion planners typically involves problem-specific intuition ...
We consider how to learn Hierarchical Task Networks (HTNs) for planning problems in which both the q...
Learningshows great promise to extend the generality and effectiveness of planning techniques. Resea...
This paper describes an explanation-based approach lo learning plans despite a computationally intra...
This paper introduces a framework for Planning while Learning where an agent is given a goal to achi...
Planning is the task of finding a set of operators whose executive transforms the current world stat...
We describe HDL, an algorithm that learns HTN do-main descriptions by examining plan traces produced...
Current classical planners are very successful in finding (nonoptimal) plans, even for large plannin...
Abstract. We discuss some ideas aiming to improve constructing of complex decisions in solving of pl...
To apply hierarchical task network (HTN) plan-ning to real-world planning problems, one needs to enc...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
Most of the available plan recognition techniques are based on the use of a plan library in order to...
Learning from past experience allows a problem solver to increase its solvability horizon from simpl...
A significant challenge in developing plan-ning systems for practical applications is the difficulty...
A great challenge in developing planning systems for practical applications is the difficulty of acq...
The process of designing hierarchical motion planners typically involves problem-specific intuition ...
We consider how to learn Hierarchical Task Networks (HTNs) for planning problems in which both the q...
Learningshows great promise to extend the generality and effectiveness of planning techniques. Resea...
This paper describes an explanation-based approach lo learning plans despite a computationally intra...
This paper introduces a framework for Planning while Learning where an agent is given a goal to achi...
Planning is the task of finding a set of operators whose executive transforms the current world stat...
We describe HDL, an algorithm that learns HTN do-main descriptions by examining plan traces produced...
Current classical planners are very successful in finding (nonoptimal) plans, even for large plannin...
Abstract. We discuss some ideas aiming to improve constructing of complex decisions in solving of pl...
To apply hierarchical task network (HTN) plan-ning to real-world planning problems, one needs to enc...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
Most of the available plan recognition techniques are based on the use of a plan library in order to...
Learning from past experience allows a problem solver to increase its solvability horizon from simpl...