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Dengue Spread Modeling in the Absence of Sufficient Epidemiological Parameters: Comparison of SARIMA and SVM Time Series Models

Author

Listed:
  • Jerelyn Co

    (Ateneo de Manila University)

  • Jason Allan Tan

    (Ateneo de Manila University)

  • Ma. Regina Justina Estuar

    (Ateneo de Manila University)

  • Kennedy Espina

    (Ateneo de Manila University)

Abstract

Dengue remains to be a major public health concern in the Philippines, claiming hundreds of lives every year. Given limited data for deriving necessary epidemiological parameters in developing deterministic disease models, forecasting as a means in controlling and anticipating outbreaks remains a challenge. In this study, two time series models, namely Seasonal Autoregressive Integrated Moving Average and Support Vector Machine, were developed without the requirement for prior epidemiological parameters. Performances of the models in predicting dengue incidences in the Western Visayas Region of the Philippines were compared by measuring the Root Mean Square Error and Mean Average Error. Results showed that the models were both effective in forecasting Dengue incidences for epidemiological surveillance as validated by historical data. SARIMA model yielded average RMSE and MAE scores of 16.8187 and 11.4640, respectively. Meanwhile, SVM model achieved scores of 11.8723 and 7.7369, respectively. With the data and setup used, this study showed that SVM outperformed SARIMA in forecasting Dengue incidences. Furthermore, preliminary investigation of one-month lagged climate variables using Random Forest Regressor’s feature ranking yielded rain intensity and value as top possible dengue incidence climate predictors

Suggested Citation

  • Jerelyn Co & Jason Allan Tan & Ma. Regina Justina Estuar & Kennedy Espina, 2017. "Dengue Spread Modeling in the Absence of Sufficient Epidemiological Parameters: Comparison of SARIMA and SVM Time Series Models," Working papers Conference proceedings The Future of Ethics, Education and Research, October 16-17, 2017 22, Research Association for Interdisciplinary Studies.
  • Handle: RePEc:smo:opaper:22
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    References listed on IDEAS

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    1. Xingyu Zhang & Tao Zhang & Alistair A Young & Xiaosong Li, 2014. "Applications and Comparisons of Four Time Series Models in Epidemiological Surveillance Data," PLOS ONE, Public Library of Science, vol. 9(2), pages 1-16, February.
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    More about this item

    Keywords

    SARIMA; SVM; Dengue Fever; Time Series Modeling; Feature importance;
    All these keywords.

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