Imitation learning algorithms have been interpreted as variants of divergence minimization problems. The ability to compare occupancy measures between experts and learners is crucial in their effectiveness in learning from demonstrations. In this paper, we present tractable solutions by formulating imitation learning as minimization of the Sinkhorn distance between occupancy measures. The formulation combines the valuable properties of optimal transport metrics in comparing non-overlapping distributions with a cosine distance cost defined in an adversarially learned feature space. This leads to a highly discriminative critic network and optimal transport plan that subsequently guide imitation learning. We evaluate the proposed approach usin...
In many sequential decision-making problems (e.g., robotics control, game playing, sequential predic...
Adversarial imitation learning has become a widely used imitation learning framework. The discrimina...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
Imitation learning refers to the problem where an agent learns to perform a task through observing a...
The introduction of the generative adversarial imitation learning (GAIL) algorithm has spurred the d...
Many existing imitation learning datasets are collected from multiple demonstrators, each with diffe...
Offline imitation from observations aims to solve MDPs where only task-specific expert states and ta...
Imitation Learning from observation describes policy learning in a similar way to human learning. An...
Imitation learning refers to a family of learning algorithms enabling the learning agents to learn d...
This paper proposes model-free imitation learning named Entropy-Regularized Imitation Learning (ERIL...
The co-adaptation of robots has been a long-standing research endeavour with the goal of adapting bo...
Imitation learning learns a policy from expert trajectories. While the expert data is believed to be...
Imitation learning refers to the problem where an agent learns a policy that mimics the demonstratio...
Robots had a great impact on the manufacturing industry ever since the early seventies when companie...
Inverse Reinforcement Learning (IRL) learns an optimal policy, given some expert demonstrations, thu...
In many sequential decision-making problems (e.g., robotics control, game playing, sequential predic...
Adversarial imitation learning has become a widely used imitation learning framework. The discrimina...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
Imitation learning refers to the problem where an agent learns to perform a task through observing a...
The introduction of the generative adversarial imitation learning (GAIL) algorithm has spurred the d...
Many existing imitation learning datasets are collected from multiple demonstrators, each with diffe...
Offline imitation from observations aims to solve MDPs where only task-specific expert states and ta...
Imitation Learning from observation describes policy learning in a similar way to human learning. An...
Imitation learning refers to a family of learning algorithms enabling the learning agents to learn d...
This paper proposes model-free imitation learning named Entropy-Regularized Imitation Learning (ERIL...
The co-adaptation of robots has been a long-standing research endeavour with the goal of adapting bo...
Imitation learning learns a policy from expert trajectories. While the expert data is believed to be...
Imitation learning refers to the problem where an agent learns a policy that mimics the demonstratio...
Robots had a great impact on the manufacturing industry ever since the early seventies when companie...
Inverse Reinforcement Learning (IRL) learns an optimal policy, given some expert demonstrations, thu...
In many sequential decision-making problems (e.g., robotics control, game playing, sequential predic...
Adversarial imitation learning has become a widely used imitation learning framework. The discrimina...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...