SILGSOC-PHAPMLJan 6, 2021

The Interplay of Demographic Variables and Social Distancing Scores in Deep Prediction of U.S. COVID-19 Cases

arXiv:2101.02113v116 citations
Originality Incremental advance
AI Analysis

This research helps government agencies target resources and funding to specific counties by understanding the determinants of COVID-19 case growth.

This study characterizes COVID-19 growth trajectories in U.S. counties using spectral clustering and correlation matrices. It identifies statistically significant demographic features distinguishing these communities and predicts future county growth with an LSTM using social distancing scores.

With the severity of the COVID-19 outbreak, we characterize the nature of the growth trajectories of counties in the United States using a novel combination of spectral clustering and the correlation matrix. As the U.S. and the rest of the world are experiencing a severe second wave of infections, the importance of assigning growth membership to counties and understanding the determinants of the growth are increasingly evident. Subsequently, we select the demographic features that are most statistically significant in distinguishing the communities. Lastly, we effectively predict the future growth of a given county with an LSTM using three social distancing scores. This comprehensive study captures the nature of counties' growth in cases at a very micro-level using growth communities, demographic factors, and social distancing performance to help government agencies utilize known information to make appropriate decisions regarding which potential counties to target resources and funding to.

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