An Unsupervised Machine Learning Approach to Assess the ZIP Code Level
Impact of COVID-19 in NYC
- URL: http://arxiv.org/abs/2006.08361v3
- Date: Fri, 18 Sep 2020 15:05:16 GMT
- Title: An Unsupervised Machine Learning Approach to Assess the ZIP Code Level
Impact of COVID-19 in NYC
- Authors: Fadoua Khmaissia, Pegah Sagheb Haghighi, Aarthe Jayaprakash, Zhenwei
Wu, Sokratis Papadopoulos, Yuan Lai, Freddy T. Nguyen
- Abstract summary: New York City has been recognized as the world's epicenter of the novel Coronavirus pandemic.
To identify the key inherent factors that are highly correlated to the Increase Rate of COVID-19 new cases in NYC, we propose an unsupervised machine learning framework.
Based on the assumption that ZIP code areas with similar demographic, socioeconomic, and mobility patterns are likely to experience similar outbreaks, we select the most relevant features to perform a clustering that can best reflect the spread, and map them down to 9 interpretable categories.
- Score: 0.11083289076967892
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: New York City has been recognized as the world's epicenter of the novel
Coronavirus pandemic. To identify the key inherent factors that are highly
correlated to the Increase Rate of COVID-19 new cases in NYC, we propose an
unsupervised machine learning framework. Based on the assumption that ZIP code
areas with similar demographic, socioeconomic, and mobility patterns are likely
to experience similar outbreaks, we select the most relevant features to
perform a clustering that can best reflect the spread, and map them down to 9
interpretable categories. We believe that our findings can guide policy makers
to promptly anticipate and prevent the spread of the virus by taking the right
measures.
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