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Predicting seasonal influenza using supermarket retail records

Author

Listed:
  • Ioanna Miliou
  • Xinyue Xiong
  • Salvatore Rinzivillo
  • Qian Zhang
  • Giulio Rossetti
  • Fosca Giannotti
  • Dino Pedreschi
  • Alessandro Vespignani

Abstract

Increased availability of epidemiological data, novel digital data streams, and the rise of powerful machine learning approaches have generated a surge of research activity on real-time epidemic forecast systems. In this paper, we propose the use of a novel data source, namely retail market data to improve seasonal influenza forecasting. Specifically, we consider supermarket retail data as a proxy signal for influenza, through the identification of sentinel baskets, i.e., products bought together by a population of selected customers. We develop a nowcasting and forecasting framework that provides estimates for influenza incidence in Italy up to 4 weeks ahead. We make use of the Support Vector Regression (SVR) model to produce the predictions of seasonal flu incidence. Our predictions outperform both a baseline autoregressive model and a second baseline based on product purchases. The results show quantitatively the value of incorporating retail market data in forecasting models, acting as a proxy that can be used for the real-time analysis of epidemics.Author summary: Seasonal influenza is a major burden to the health care systems of countries. Machine learning approaches and data from external sources are increasingly used for flu forecasting in recent years. In this study, we explore whether the inclusion of retail records in a predictive model improves seasonal influenza forecasting. Specifically, we consider supermarket retail data as a proxy signal for influenza, through the identification of sentinel baskets, i.e., products bought together by a population of selected customers. We develop a nowcasting and forecasting framework that provides estimates for influenza incidence in Italy up to 4 weeks ahead. Our predictions outperform the baseline approaches thus proving the added value of incorporating retail market data in forecasting models.

Suggested Citation

  • Ioanna Miliou & Xinyue Xiong & Salvatore Rinzivillo & Qian Zhang & Giulio Rossetti & Fosca Giannotti & Dino Pedreschi & Alessandro Vespignani, 2021. "Predicting seasonal influenza using supermarket retail records," PLOS Computational Biology, Public Library of Science, vol. 17(7), pages 1-18, July.
  • Handle: RePEc:plo:pcbi00:1009087
    DOI: 10.1371/journal.pcbi.1009087
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    References listed on IDEAS

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    1. Jean-Paul Chretien & Dylan George & Jeffrey Shaman & Rohit A Chitale & F Ellis McKenzie, 2014. "Influenza Forecasting in Human Populations: A Scoping Review," PLOS ONE, Public Library of Science, vol. 9(4), pages 1-8, April.
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