We study how to effectively leverage expert feedback to learn sequential decision-making policies. We focus on problems with sparse rewards and long time horizons, which typically pose significant challenges in reinforcement learning. We propose an algorithmic framework, called hierarchical guidance, that leverages the hierarchical structure of the underlying problem to integrate different modes of expert interaction. Our framework can incorporate different combinations of imitation learning (IL) and reinforcement learning (RL) at different levels, leading to dramatic reductions in both expert effort and cost of exploration. Using long-horizon benchmarks, including Montezuma’s Revenge, we demonstrate that our approach can learn significantl...
This paper investigates a novel method combining Scalable Evolution Strategies (S-ES) and Hierarchi...
In many sequential decision-making problems (e.g., robotics control, game playing, sequential predic...
Reinforcement Learning (RL) is an elegant approach to tackle sequential decision-making problems. In...
Effective exploration continues to be a significant challenge that prevents the deployment of reinfo...
Reinforcement learning problems with sparse and delayed rewards are challenging to solve because th...
Reinforcement learning problems with sparse and delayed rewards are challenging to solve because th...
Different from classic Supervised Learning, Reinforcement Learning (RL), is fundamentally interactiv...
As robots and other autonomous agents enter our homes, hospitals, schools, and workplaces, it is imp...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
We consider the problem of imitation learning from a finite set of expert trajectories, without acce...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
Adversarial imitation learning (AIL) has become a popular alternative to supervised imitation learni...
The acquisition of hierarchies of reusable skills is one of the distinguishing characteristics of hu...
Inverse Reinforcement Learning (IRL) learns an optimal policy, given some expert demonstrations, thu...
Reinforcement learning (RL) has demonstrated its superiority in solving sequential decision-making p...
This paper investigates a novel method combining Scalable Evolution Strategies (S-ES) and Hierarchi...
In many sequential decision-making problems (e.g., robotics control, game playing, sequential predic...
Reinforcement Learning (RL) is an elegant approach to tackle sequential decision-making problems. In...
Effective exploration continues to be a significant challenge that prevents the deployment of reinfo...
Reinforcement learning problems with sparse and delayed rewards are challenging to solve because th...
Reinforcement learning problems with sparse and delayed rewards are challenging to solve because th...
Different from classic Supervised Learning, Reinforcement Learning (RL), is fundamentally interactiv...
As robots and other autonomous agents enter our homes, hospitals, schools, and workplaces, it is imp...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
We consider the problem of imitation learning from a finite set of expert trajectories, without acce...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
Adversarial imitation learning (AIL) has become a popular alternative to supervised imitation learni...
The acquisition of hierarchies of reusable skills is one of the distinguishing characteristics of hu...
Inverse Reinforcement Learning (IRL) learns an optimal policy, given some expert demonstrations, thu...
Reinforcement learning (RL) has demonstrated its superiority in solving sequential decision-making p...
This paper investigates a novel method combining Scalable Evolution Strategies (S-ES) and Hierarchi...
In many sequential decision-making problems (e.g., robotics control, game playing, sequential predic...
Reinforcement Learning (RL) is an elegant approach to tackle sequential decision-making problems. In...