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On Learning Informative Trajectory Embeddings for Imitation, Classification and Regression Speaker (s):
 GE Zichang PhD Candidate School of Computing and Information Systems Singapore Management University
| Date: | 15 April 2025, Tuesday | Time: | 4:00pm – 4:30pm | | Venue: | Meeting room 4.4, Level 4. School of Computing and Information Systems 1, Singapore Management University, 80 Stamford Road, Singapore 178902 | | | We look forward to seeing you at this research seminar. Please register by 14 April 2025. |  |
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About the Talk In real-world sequential decision making tasks like autonomous driving, robotics, and healthcare, learning from observed state-action trajectories is critical for tasks like imitation, classification, and clustering. For example, self-driving cars must replicate human driving behaviors, while robots and healthcare systems benefit from modeling decision sequences, whether or not they come from expert data. Existing trajectory encoding methods often focus on specific tasks or rely on reward signals, limiting their ability to generalize across domains and tasks. Inspired by the success of embedding models like CLIP and BERT in static domains, we propose a novel method for embedding state-action trajectories into a latent space that captures the skills and competencies in the dynamic underlying decision-making processes. This method operates without the need for reward labels, enabling better generalization across diverse domains and tasks. Our contributions are threefold: (1) We introduce a trajectory embedding approach that captures multiple abilities from state-action data. (2) The learned embeddings exhibit strong representational power across downstream tasks, including imitation, classification, clustering, and regression. (3) The embeddings demonstrate unique properties, such as controlling agent behaviors in IQ-Learn and an additive structure in the latent space. Experimental results confirm that our method outperforms traditional approaches, offering more flexible and powerful trajectory representations for various applications.
This is a Pre-Conference talk for The 24th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2025). About the speaker GE Zichang is a Ph.D. Candidate in Computer Science at the SMU School of Computing and Information Systems, supervised by Professor Pradeep VARAKANTHAM. His research interests are representation learning, imitation learning and data augmentation.
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