MGLEP: Multimodal Graph Learning for Modeling Emerging Pandemics with Big Data.

Publication date: Jul 16, 2024

Accurate forecasting and analysis of emerging pandemics play a crucial role in effective public health management and decision-making. Traditional approaches primarily rely on epidemiological data, overlooking other valuable sources of information that could act as sensors or indicators of pandemic patterns. In this paper, we propose a novel framework, MGLEP, that integrates temporal graph neural networks and multi-modal data for learning and forecasting. We incorporate big data sources, including social media content, by utilizing specific pre-trained language models and discovering the underlying graph structure among users. This integration provides rich indicators of pandemic dynamics through learning with temporal graph neural networks. Extensive experiments demonstrate the effectiveness of our framework in pandemic forecasting and analysis, outperforming baseline methods across different areas, pandemic situations, and prediction horizons. The fusion of temporal graph learning and multi-modal data enables a comprehensive understanding of the pandemic landscape with less time lag, cheap cost, and more potential information indicators.

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Concepts Keywords
Graph Big Data
Informatics COVID-19
Models Forecasting
Pandemic Humans
Rich Neural Networks, Computer
Pandemics
Social Media

Semantics

Type Source Name
disease VO effective
drug DRUGBANK Sulpiride
disease VO effectiveness
disease VO time
drug DRUGBANK Coenzyme M
disease MESH infectious diseases
disease MESH COVID 19 pandemic
disease VO efficient
disease VO vaccination
disease VO population
disease MESH death
disease IDO process
disease VO USA
disease IDO history
disease IDO entity
drug DRUGBANK Tropicamide
disease MESH infection
disease IDO country
disease VO volume
drug DRUGBANK Trestolone
disease IDO quality
drug DRUGBANK Alpha-1-proteinase inhibitor
disease IDO algorithm
disease VO organization
drug DRUGBANK Guanosine

Original Article

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