4.7 Article

COVID-19 mortality analysis from soft-data multivariate curve regression and machine learning

期刊

出版社

SPRINGER
DOI: 10.1007/s00477-021-02021-0

关键词

COVID-19 analysis; Curve regression; Hard-data; Machine learning; Multivariate time series; Soft-data

资金

  1. Ministerio de Ciencia, Innovacion y Universidades, Spain [PGC2018-099549-B-I00]
  2. FEDER funds
  3. ERDF Operational Programme 2014-2020
  4. Economy and Knowledge Council of the Regional Government of Andalusia, Spain
  5. [A-FQM-345-UGR18]

向作者/读者索取更多资源

The article introduces a multiple objective space-time forecasting approach involving cyclical curve log-regression and multivariate time series spatial residual correlation analysis. The empirical analysis using COVID-19 mortality data demonstrates the method's advantages in prediction accuracy.
A multiple objective space-time forecasting approach is presented involving cyclical curve log-regression, and multivariate time series spatial residual correlation analysis. Specifically, the mean quadratic loss function is minimized in the framework of trigonometric regression. While, in our subsequent spatial residual correlation analysis, maximization of the likelihood allows us to compute the posterior mode in a Bayesian multivariate time series soft-data framework. The presented approach is applied to the analysis of COVID-19 mortality in the first wave affecting the Spanish Communities, since March 8, 2020 until May 13, 2020. An empirical comparative study with Machine Learning (ML) regression, based on random k-fold cross-validation, and bootstrapping confidence interval and probability density estimation, is carried out. This empirical analysis also investigates the performance of ML regression models in a hard- and soft-data frameworks. The results could be extrapolated to other counts, countries, and posterior COVID-19 waves.

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