Selected article for: "current pandemic and exist model"

Author: Rodriguez, Alexander; Muralidhar, Nikhil; Adhikari, Bijaya; Tabassum, Anika; Ramakrishnan, Naren; Prakash, B. Aditya
Title: Steering a Historical Disease Forecasting Model Under a Pandemic: Case of Flu and COVID-19
  • Cord-id: u94mntu0
  • Document date: 2020_9_23
  • ID: u94mntu0
    Snippet: Forecasting influenza in a timely manner aids health organizations and policymakers in adequate preparation and decision making. However, effective influenza forecasting still remains a challenge despite increasing research interest. It is even more challenging amidst the COVID pandemic, when the influenza-like illness (ILI) counts is affected by various factors such as symptomatic similarities with COVID-19 and shift in healthcare seeking patterns of the general population. We term the ILI valu
    Document: Forecasting influenza in a timely manner aids health organizations and policymakers in adequate preparation and decision making. However, effective influenza forecasting still remains a challenge despite increasing research interest. It is even more challenging amidst the COVID pandemic, when the influenza-like illness (ILI) counts is affected by various factors such as symptomatic similarities with COVID-19 and shift in healthcare seeking patterns of the general population. We term the ILI values observed when it is potentially affected as COVID-ILI. Under the current pandemic, historical influenza models carry valuable expertise about the disease dynamics but face difficulties adapting. Therefore, we propose CALI-NET, a neural transfer learning architecture which allows us to 'steer' a historical disease forecasting model to new scenarios where flu and COVID co-exist. Our framework enables this adaptation by automatically learning when it is should emphasize learning from COVID-related signals and when from the historical model. In such way, we exploit representations learned from historical ILI data as well as the limited COVID-related signals. Our experiments demonstrate that our approach is successful in adapting a historical forecasting model to the current pandemic. In addition, we show that success in our primary goal, adaptation, does not sacrifice overall performance as compared with state-of-the-art influenza forecasting approaches.

    Search related documents:
    Co phrase search for related documents
    • accurate forecast and long term forecasting: 1, 2, 3, 4
    • accurate forecasting and long term forecasting: 1, 2, 3, 4, 5