CUTS+: High-Dimensional Causal Discovery from Irregular Time-Series

Authors

  • Yuxiao Cheng Tsinghua University
  • Lianglong Li Tsinghua University
  • Tingxiong Xiao Tsinghua University
  • Zongren Li Chinese PLA General Hospital
  • Jinli Suo Tsinghua University
  • Kunlun He Chinese PLA General Hospital
  • Qionghai Dai Tsinghua University

DOI:

https://doi.org/10.1609/aaai.v38i10.29034

Keywords:

ML: Causal Learning, ML: Deep Learning Algorithms

Abstract

Causal discovery in time-series is a fundamental problem in the machine learning community, enabling causal reasoning and decision-making in complex scenarios. Recently, researchers successfully discover causality by combining neural networks with Granger causality, but their performances degrade largely when encountering high-dimensional data because of the highly redundant network design and huge causal graphs. Moreover, the missing entries in the observations further hamper the causal structural learning. To overcome these limitations, We propose CUTS+, which is built on the Granger-causality-based causal discovery method CUTS and raises the scalability by introducing a technique called Coarse-to-fine-discovery (C2FD) and leveraging a message-passing-based graph neural network (MPGNN). Compared to previous methods on simulated, quasi-real, and real datasets, we show that CUTS+ largely improves the causal discovery performance on high-dimensional data with different types of irregular sampling.

Published

2024-03-24

How to Cite

Cheng, Y., Li, L., Xiao, T., Li, Z., Suo, J., He, K., & Dai, Q. (2024). CUTS+: High-Dimensional Causal Discovery from Irregular Time-Series. Proceedings of the AAAI Conference on Artificial Intelligence, 38(10), 11525-11533. https://doi.org/10.1609/aaai.v38i10.29034

Issue

Section

AAAI Technical Track on Machine Learning I