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Main Authors: Li, Amber, Abil, Aruzhan, Oda, Juno Marques
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.10775
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author Li, Amber
Abil, Aruzhan
Oda, Juno Marques
author_facet Li, Amber
Abil, Aruzhan
Oda, Juno Marques
contents In financial markets, Graph Neural Networks have been successfully applied to modeling relational data, effectively capturing nonlinear inter-stock dependencies. Yet, existing models often fail to efficiently propagate messages during macroeconomic shocks. In this paper, we propose OmniGNN, an attention-based multi-relational dynamic GNN that integrates macroeconomic context via heterogeneous node and edge types for robust message passing. Central to OmniGNN is a sector node acting as a global intermediary, enabling rapid shock propagation across the graph without relying on long-range multi-hop diffusion. The model leverages Graph Attention Networks (GAT) to weigh neighbor contributions and employs Transformers to capture temporal dynamics across multiplex relations. Experiments show that OmniGNN outperforms existing stock prediction models on public datasets, particularly demonstrating strong robustness during the COVID-19 period.
format Preprint
id arxiv_https___arxiv_org_abs_2510_10775
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Structure Over Signal: A Globalized Approach to Multi-relational GNNs for Stock Prediction
Li, Amber
Abil, Aruzhan
Oda, Juno Marques
Machine Learning
In financial markets, Graph Neural Networks have been successfully applied to modeling relational data, effectively capturing nonlinear inter-stock dependencies. Yet, existing models often fail to efficiently propagate messages during macroeconomic shocks. In this paper, we propose OmniGNN, an attention-based multi-relational dynamic GNN that integrates macroeconomic context via heterogeneous node and edge types for robust message passing. Central to OmniGNN is a sector node acting as a global intermediary, enabling rapid shock propagation across the graph without relying on long-range multi-hop diffusion. The model leverages Graph Attention Networks (GAT) to weigh neighbor contributions and employs Transformers to capture temporal dynamics across multiplex relations. Experiments show that OmniGNN outperforms existing stock prediction models on public datasets, particularly demonstrating strong robustness during the COVID-19 period.
title Structure Over Signal: A Globalized Approach to Multi-relational GNNs for Stock Prediction
topic Machine Learning
url https://arxiv.org/abs/2510.10775