We present a new approach to learning for planning, where knowledge acquired while solving a given set of planning problems is used to plan faster in related, but new problem instances. We show that a deep neural network can be used to learn and represent a generalized reactive policy (GRP) that maps a problem instance and a state to an action, and that the learned GRPs efficiently solve large classes of challenging problem instances. In contrast to prior efforts in this direction, our approach significantly reduces the dependence of learning on handcrafted domain knowledge or feature selection. Instead, the GRP is trained from scratch using a set of successful execution traces. We show that our approach can also be used to automatically le...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Recent advances in deep learning have enabled optimization of deep reactive policies (DRPs) for cont...
Heuristic forward search is currently the dominant paradigm in classical planning. Forward search al...
abstract: Classical planning is a field of Artificial Intelligence concerned with allowing autonomou...
State-of-the-art probabilistic planners typically apply look- ahead search and reasoning at each ste...
Recent advances in applying deep learning to planning have shown that Deep Reactive Policies (DRPs) ...
In this paper, we introduce the Action Schema Network (ASNet): a neural network architecture for lea...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
We consider a novel use of mostly-correct reactive policies. In classical planning, reactive policy ...
Generalized planning is concerned with the computation of general policies that solve multiple insta...
Computing goal-directed behavior is essential to designing efficient AI systems. Due to the computat...
We introduce Dynamic Planning Networks (DPN), a novel architecture for deep reinforcement learning, ...
We consider a novel use of mostly-correct reactive policies. In classical planning, reactive policy ...
We consider how to learn Hierarchical Task Networks (HTNs) for planning problems in which both the q...
It has been recently shown that general policies for many classical planning domains can be expresse...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Recent advances in deep learning have enabled optimization of deep reactive policies (DRPs) for cont...
Heuristic forward search is currently the dominant paradigm in classical planning. Forward search al...
abstract: Classical planning is a field of Artificial Intelligence concerned with allowing autonomou...
State-of-the-art probabilistic planners typically apply look- ahead search and reasoning at each ste...
Recent advances in applying deep learning to planning have shown that Deep Reactive Policies (DRPs) ...
In this paper, we introduce the Action Schema Network (ASNet): a neural network architecture for lea...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
We consider a novel use of mostly-correct reactive policies. In classical planning, reactive policy ...
Generalized planning is concerned with the computation of general policies that solve multiple insta...
Computing goal-directed behavior is essential to designing efficient AI systems. Due to the computat...
We introduce Dynamic Planning Networks (DPN), a novel architecture for deep reinforcement learning, ...
We consider a novel use of mostly-correct reactive policies. In classical planning, reactive policy ...
We consider how to learn Hierarchical Task Networks (HTNs) for planning problems in which both the q...
It has been recently shown that general policies for many classical planning domains can be expresse...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Recent advances in deep learning have enabled optimization of deep reactive policies (DRPs) for cont...
Heuristic forward search is currently the dominant paradigm in classical planning. Forward search al...