TL;DR
DeepCOVIDNet is an interpretable deep learning model that forecasts COVID-19 case increases using heterogeneous data sources and analyzes feature interactions to aid pandemic surveillance and policy decisions.
Contribution
The paper introduces a novel method for representing multivariate time series and a deep learning model that integrates diverse features for COVID-19 prediction and interpretability.
Findings
Achieves satisfactory predictive performance.
Identifies influential features for infection growth.
Analyzes second-order feature interactions.
Abstract
In this paper, we propose a deep learning model to forecast the range of increase in COVID-19 infected cases in future days and we present a novel method to compute equidimensional representations of multivariate time series and multivariate spatial time series data. Using this novel method, the proposed model can both take in a large number of heterogeneous features, such as census data, intra-county mobility, inter-county mobility, social distancing data, past growth of infection, among others, and learn complex interactions between these features. Using data collected from various sources, we estimate the range of increase in infected cases seven days into the future for all U.S. counties. In addition, we use the model to identify the most influential features for prediction of the growth of infection. We also analyze pairs of features and estimate the amount of observed second-order…
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