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📄 Abstract
Abstract: In recent years, spatio-temporal graph neural networks (GNNs) have attracted
considerable interest in the field of time series analysis, due to their
ability to capture, at once, dependencies among variables and across time
points. The objective of this systematic literature review is hence to provide
a comprehensive overview of the various modeling approaches and application
domains of GNNs for time series classification and forecasting. A database
search was conducted, and 366 papers were selected for a detailed examination
of the current state-of-the-art in the field. This examination is intended to
offer to the reader a comprehensive review of proposed models, links to related
source code, available datasets, benchmark models, and fitting results. All
this information is hoped to assist researchers in their studies. To the best
of our knowledge, this is the first and broadest systematic literature review
presenting a detailed comparison of results from current spatio-temporal GNN
models applied to different domains. In its final part, this review discusses
current limitations and challenges in the application of spatio-temporal GNNs,
such as comparability, reproducibility, explainability, poor information
capacity, and scalability. This paper is complemented by a GitHub repository at
https://github.com/FlaGer99/SLR-Spatio-Temporal-GNN.git providing additional
interactive tools to further explore the presented findings.
Authors (6)
Flavio Corradini
Flavio Gerosa
Marco Gori
Carlo Lucheroni
Marco Piangerelli
Martina Zannotti
Submitted
October 29, 2024
Key Contributions
This paper provides a comprehensive systematic literature review of Spatio-Temporal Graph Neural Network models for time series forecasting and classification. It offers an overview of various modeling approaches, application domains, and presents a detailed comparison of results from current state-of-the-art models, aiming to assist researchers.
Business Value
Provides a structured understanding of advanced GNN techniques for time series data, enabling businesses to leverage these models for more accurate forecasting and classification in areas like financial markets, weather prediction, and anomaly detection.