We study the problem of generating interpretable and verifiable policies for Reinforcement Learning (RL). Unlike the popular Deep Reinforcement Learning (DRL) paradigm, in which the policy is represented by a neural network, the aim of this work is to find policies that can be represented in highlevel programming languages. Such programmatic policies have several benefits, including being more easily interpreted than neural networks, and being amenable to verification by scalable symbolic methods. The generation methods for programmatic policies also provide a mechanism for systematically using domain knowledge for guiding the policy search. The interpretability and verifiability of these policies provides the opportunity to deploy RL based...
Formal verification provides a high degree of confidence in safe system operation, but only if reali...
Understanding the interactions of agents trained with deep reinforcement learning is crucial for dep...
Reinforcement Learning (RL) is a widely employed machine learning architecture that has been applied...
Programmatic Reinforcement Learning is the study of learning algorithms that can leverage partial sy...
Today’s advanced Reinforcement Learning algorithms produce black-box policies, that are often diffic...
© 2018 Curran Associates Inc.All rights reserved. While deep reinforcement learning has successfully...
Summarization: Motivated by recent proposals that view a reinforcement learning problem as a collect...
Reactive synthesis algorithms allow automatic construction of policies to control an environment mod...
Reinforcement Learning (RL) is a widely employed machine learning architecture that has been applied...
Deep reinforcement learning is an increasingly popular technique for synthesising policies to contro...
Deep reinforcement learning is an increasingly popular technique for synthesising policies to contro...
In Reinforcement Learning, legible behavior requires to maintain a policy that is easily discernable...
We present a data-efficient framework for solving sequential decision-making problems which exploits...
Despite the successes of deep reinforcement learning (RL), it is still challenging to obtain safe po...
Though reinforcement learning has greatly benefited from the incorporation of neural networks, the i...
Formal verification provides a high degree of confidence in safe system operation, but only if reali...
Understanding the interactions of agents trained with deep reinforcement learning is crucial for dep...
Reinforcement Learning (RL) is a widely employed machine learning architecture that has been applied...
Programmatic Reinforcement Learning is the study of learning algorithms that can leverage partial sy...
Today’s advanced Reinforcement Learning algorithms produce black-box policies, that are often diffic...
© 2018 Curran Associates Inc.All rights reserved. While deep reinforcement learning has successfully...
Summarization: Motivated by recent proposals that view a reinforcement learning problem as a collect...
Reactive synthesis algorithms allow automatic construction of policies to control an environment mod...
Reinforcement Learning (RL) is a widely employed machine learning architecture that has been applied...
Deep reinforcement learning is an increasingly popular technique for synthesising policies to contro...
Deep reinforcement learning is an increasingly popular technique for synthesising policies to contro...
In Reinforcement Learning, legible behavior requires to maintain a policy that is easily discernable...
We present a data-efficient framework for solving sequential decision-making problems which exploits...
Despite the successes of deep reinforcement learning (RL), it is still challenging to obtain safe po...
Though reinforcement learning has greatly benefited from the incorporation of neural networks, the i...
Formal verification provides a high degree of confidence in safe system operation, but only if reali...
Understanding the interactions of agents trained with deep reinforcement learning is crucial for dep...
Reinforcement Learning (RL) is a widely employed machine learning architecture that has been applied...