Improving COVID-19 Forecasting using eXogenous Variables
- URL: http://arxiv.org/abs/2107.10397v1
- Date: Tue, 20 Jul 2021 03:26:18 GMT
- Title: Improving COVID-19 Forecasting using eXogenous Variables
- Authors: Mohammadhossein Toutiaee, Xiaochuan Li, Yogesh Chaudhari, Shophine
Sivaraja, Aishwarya Venkataraj, Indrajeet Javeri, Yuan Ke, Ismailcem Arpinar,
Nicole Lazar, John Miller
- Abstract summary: We study the pandemic course in the United States by considering national and state levels data.
We propose and compare multiple time-series prediction techniques which incorporate auxiliary variables.
- Score: 7.245000255986182
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we study the pandemic course in the United States by
considering national and state levels data. We propose and compare multiple
time-series prediction techniques which incorporate auxiliary variables. One
type of approach is based on spatio-temporal graph neural networks which
forecast the pandemic course by utilizing a hybrid deep learning architecture
and human mobility data. Nodes in this graph represent the state-level deaths
due to COVID-19, edges represent the human mobility trend and temporal edges
correspond to node attributes across time. The second approach is based on a
statistical technique for COVID-19 mortality prediction in the United States
that uses the SARIMA model and eXogenous variables. We evaluate these
techniques on both state and national levels COVID-19 data in the United States
and claim that the SARIMA and MCP models generated forecast values by the
eXogenous variables can enrich the underlying model to capture complexity in
respectively national and state levels data. We demonstrate significant
enhancement in the forecasting accuracy for a COVID-19 dataset, with a maximum
improvement in forecasting accuracy by 64.58% and 59.18% (on average) over the
GCN-LSTM model in the national level data, and 58.79% and 52.40% (on average)
over the GCN-LSTM model in the state level data. Additionally, our proposed
model outperforms a parallel study (AUG-NN) by 27.35% improvement of accuracy
on average.
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