Generalizing across Temporal Domains with Koopman Operators

Authors

  • Qiuhao Zeng University of Western Ontario
  • Wei Wang University of Western Ontario
  • Fan Zhou Beihang University
  • Gezheng Xu University of Western Ontario
  • Ruizhi Pu University of Western Ontario
  • Changjian Shui Vector Institute
  • Christian Gagné Université Laval
  • Shichun Yang Beihang University
  • Charles X. Ling University of Western Ontario
  • Boyu Wang University of Western Ontario

DOI:

https://doi.org/10.1609/aaai.v38i15.29604

Keywords:

ML: Transfer, Domain Adaptation, Multi-Task Learning, ML: Time-Series/Data Streams

Abstract

In the field of domain generalization, the task of constructing a predictive model capable of generalizing to a target domain without access to target data remains challenging. This problem becomes further complicated when considering evolving dynamics between domains. While various approaches have been proposed to address this issue, a comprehensive understanding of the underlying generalization theory is still lacking. In this study, we contribute novel theoretic results that aligning conditional distribution leads to the reduction of generalization bounds. Our analysis serves as a key motivation for solving the Temporal Domain Generalization (TDG) problem through the application of Koopman Neural Operators, resulting in Temporal Koopman Networks (TKNets). By employing Koopman Neural Operators, we effectively address the time-evolving distributions encountered in TDG using the principles of Koopman theory, where measurement functions are sought to establish linear transition relations between evolving domains. Through empirical evaluations conducted on synthetic and real-world datasets, we validate the effectiveness of our proposed approach.

Published

2024-03-24

How to Cite

Zeng, Q., Wang, W., Zhou, F., Xu, G., Pu, R., Shui, C., Gagné, C., Yang, S., Ling, C. X., & Wang, B. (2024). Generalizing across Temporal Domains with Koopman Operators. Proceedings of the AAAI Conference on Artificial Intelligence, 38(15), 16651-16659. https://doi.org/10.1609/aaai.v38i15.29604

Issue

Section

AAAI Technical Track on Machine Learning VI