Deep reinforcement learning (DRL) has gained great success by learning directly from high-dimensional sensory inputs, yet is notorious for the lack of interpretability. Interpretability of the subtasks is critical in hierarchical decision-making as it increases the transparency of black-box-style DRL approach and helps the RL practitioners to understand the high-level behavior of the system better. In this paper, we introduce symbolic planning into DRL and propose a framework of Symbolic Deep Reinforcement Learning (SDRL) that can handle both high-dimensional sensory inputs and symbolic planning. The task-level interpretability is enabled by relating symbolic actions to options.This framework features a planner – controller – meta-controlle...
This thesis focuses on Reinforcement Learning (RL) which considers an agent that makes sequen- tial ...
Deep Reinforcement Learning (DRL), is becoming a popular and mature framework for learning to solve ...
Current domain-independent, classical planners require symbolic models of the problem domain and ins...
Deep reinforcement learning (DRL) has gained great success by learning directly from high-dimensiona...
Despite of achieving great success in real life, Deep Reinforcement Learning (DRL) is still sufferin...
Despite its successes, Deep Reinforcement Learning (DRL) yields non-interpretable policies. Moreover...
Deep reinforcement learning (DRL) has shown remarkable success in artificial domains and in some rea...
Deep reinforcement learning (DRL) brings the power of deep neural networks to bear on the generic ta...
One of the main challenges in AI is performing dynamic tasks by using approaches that efficiently pr...
In this paper we introduce Detect, Understand, Act (DUA), a neuro-symbolic reinforcement learning fr...
Creating reinforcement learning (RL) agents that are capable of accepting and leveraging task-specif...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...
Long-horizon manipulation tasks such as stacking represent a longstanding challenge in the field of ...
Teaching a deep reinforcement learning (RL) agent to follow instructions in multi-task environments ...
Many environments involve following rules and tasks; for example, a chef cooking a dish follows a re...
This thesis focuses on Reinforcement Learning (RL) which considers an agent that makes sequen- tial ...
Deep Reinforcement Learning (DRL), is becoming a popular and mature framework for learning to solve ...
Current domain-independent, classical planners require symbolic models of the problem domain and ins...
Deep reinforcement learning (DRL) has gained great success by learning directly from high-dimensiona...
Despite of achieving great success in real life, Deep Reinforcement Learning (DRL) is still sufferin...
Despite its successes, Deep Reinforcement Learning (DRL) yields non-interpretable policies. Moreover...
Deep reinforcement learning (DRL) has shown remarkable success in artificial domains and in some rea...
Deep reinforcement learning (DRL) brings the power of deep neural networks to bear on the generic ta...
One of the main challenges in AI is performing dynamic tasks by using approaches that efficiently pr...
In this paper we introduce Detect, Understand, Act (DUA), a neuro-symbolic reinforcement learning fr...
Creating reinforcement learning (RL) agents that are capable of accepting and leveraging task-specif...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...
Long-horizon manipulation tasks such as stacking represent a longstanding challenge in the field of ...
Teaching a deep reinforcement learning (RL) agent to follow instructions in multi-task environments ...
Many environments involve following rules and tasks; for example, a chef cooking a dish follows a re...
This thesis focuses on Reinforcement Learning (RL) which considers an agent that makes sequen- tial ...
Deep Reinforcement Learning (DRL), is becoming a popular and mature framework for learning to solve ...
Current domain-independent, classical planners require symbolic models of the problem domain and ins...