Latent Wasserstein Adversarial Imitation Learning

2026-03-05Machine Learning

Machine Learning
AI summary

The authors present a new way for machines to learn by copying expert behavior without needing many examples or even the expert's exact actions. They create a special space that understands how things change over time and use it to compare the states the machine visits to those of the expert. This approach allows the machine to learn well from just a few examples. Their tests on different tasks showed better results than earlier methods that also tried to match expert behavior using similar mathematical tools.

Imitation LearningWasserstein DistanceAdversarial LearningState-only DemonstrationsLatent SpaceIntention Conditioned Value FunctionPolicy LearningMuJoCo EnvironmentDynamics-aware Representation
Authors
Siqi Yang, Kai Yan, Alexander G. Schwing, Yu-Xiong Wang
Abstract
Imitation Learning (IL) enables agents to mimic expert behavior by learning from demonstrations. However, traditional IL methods require large amounts of medium-to-high-quality demonstrations as well as actions of expert demonstrations, both of which are often unavailable. To reduce this need, we propose Latent Wasserstein Adversarial Imitation Learning (LWAIL), a novel adversarial imitation learning framework that focuses on state-only distribution matching. It benefits from the Wasserstein distance computed in a dynamics-aware latent space. This dynamics-aware latent space differs from prior work and is obtained via a pre-training stage, where we train the Intention Conditioned Value Function (ICVF) to capture a dynamics-aware structure of the state space using a small set of randomly generated state-only data. We show that this enhances the policy's understanding of state transitions, enabling the learning process to use only one or a few state-only expert episodes to achieve expert-level performance. Through experiments on multiple MuJoCo environments, we demonstrate that our method outperforms prior Wasserstein-based IL methods and prior adversarial IL methods, achieving better results across various tasks.