LGCYSISep 20, 2022

Attributed Network Embedding Model for Exposing COVID-19 Spread Trajectory Archetypes

arXiv:2209.09448v23 citationsh-index: 55
Originality Synthesis-oriented
AI Analysis

This provides a data-driven approach for predictive pandemic monitoring that complements standard epidemiological models, though it appears incremental as an application of existing network embedding methods to COVID-19 data.

This study developed an attributed network embedding model to analyze COVID-19 spread trajectories across 2,787 U.S. counties during the initial wave, identifying four distinct archetypes of transmission risk patterns and uncovering key features driving these differences.

The spread of COVID-19 revealed that transmission risk patterns are not homogenous across different cities and communities, and various heterogeneous features can influence the spread trajectories. Hence, for predictive pandemic monitoring, it is essential to explore latent heterogeneous features in cities and communities that distinguish their specific pandemic spread trajectories. To this end, this study creates a network embedding model capturing cross-county visitation networks, as well as heterogeneous features to uncover clusters of counties in the United States based on their pandemic spread transmission trajectories. We collected and computed location intelligence features from 2,787 counties from March 3 to June 29, 2020 (initial wave). Second, we constructed a human visitation network, which incorporated county features as node attributes, and visits between counties as network edges. Our attributed network embeddings approach integrates both typological characteristics of the cross-county visitation network, as well as heterogeneous features. We conducted clustering analysis on the attributed network embeddings to reveal four archetypes of spread risk trajectories corresponding to four clusters of counties. Subsequently, we identified four features as important features underlying the distinctive transmission risk patterns among the archetypes. The attributed network embedding approach and the findings identify and explain the non-homogenous pandemic risk trajectories across counties for predictive pandemic monitoring. The study also contributes to data-driven and deep learning-based approaches for pandemic analytics to complement the standard epidemiological models for policy analysis in pandemics.

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