GraFITi: Graphs for Forecasting Irregularly Sampled Time Series

Authors

  • Vijaya Krishna Yalavarthi ISMLL, University of Hildesheim
  • Kiran Madhusudhanan ISMLL, University of Hildesheim
  • Randolf Scholz ISMLL, University of Hildesheim
  • Nourhan Ahmed ISMLL, University of Hildesheim
  • Johannes Burchert ISMLL, University of Hildesheim
  • Shayan Jawed ISMLL, University of Hildesheim
  • Stefan Born Technische Universität Berlin
  • Lars Schmidt-Thieme ISMLL, University of Hildesheim

DOI:

https://doi.org/10.1609/aaai.v38i15.29560

Keywords:

ML: Time-Series/Data Streams, ML: Classification and Regression, ML: Deep Learning Algorithms, ML: Graph-based Machine Learning

Abstract

Forecasting irregularly sampled time series with missing values is a crucial task for numerous real-world applications such as healthcare, astronomy, and climate sciences. State-of-the-art approaches to this problem rely on Ordinary Differential Equations (ODEs) which are known to be slow and often require additional features to handle missing values. To address this issue, we propose a novel model using Graphs for Forecasting Irregularly Sampled Time Series with missing values which we call GraFITi. GraFITi first converts the time series to a Sparsity Structure Graph which is a sparse bipartite graph, and then reformulates the forecasting problem as the edge weight prediction task in the graph. It uses the power of Graph Neural Networks to learn the graph and predict the target edge weights. GraFITi has been tested on 3 real-world and 1 synthetic irregularly sampled time series dataset with missing values and compared with various state-of-the-art models. The experimental results demonstrate that GraFITi improves the forecasting accuracy by up to 17% and reduces the run time up to 5 times compared to the state-of-the-art forecasting models.

Published

2024-03-24

How to Cite

Yalavarthi, V. K., Madhusudhanan, K., Scholz, R., Ahmed, N., Burchert, J., Jawed, S., Born, S., & Schmidt-Thieme, L. (2024). GraFITi: Graphs for Forecasting Irregularly Sampled Time Series. Proceedings of the AAAI Conference on Artificial Intelligence, 38(15), 16255-16263. https://doi.org/10.1609/aaai.v38i15.29560

Issue

Section

AAAI Technical Track on Machine Learning VI