A Gaussian Process Regression And Wavelet Transform Time Series Approaches To Modeling Influenza A.
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Computers in Biology and Medicine
Abstract
The global spread of Influenza A viruses is worsening economic and social challenges. Various mechanistic
models have been developed to understand the virus’s spread and evaluate intervention effectiveness. This
study aimed to model the temporal dynamics of Influenza A using Gaussian Process Regression (GPR) and
wavelet transform approaches. The study employed Continuous Wavelet Transform (CWT), Discrete Wavelet
Transform (DWT) and Wavelet Power Spectrum to analyze time-series data from 2009 to 2023. The GPR model,
known for its non-parametric Bayesian nature, effectively captured non-linear trends in the Influenza A data,
while wavelet transforms provided insights into frequency and time-localized characteristics. The integration
of GPR with DWT denoising techniques demonstrated superior performance in forecasting Influenza A cases
compared to traditional models like Auto Regressive Integrated Moving Averages (ARIMA) and Exponential
Smoothing (ETS) using Holt–Winter method. The study identified significant anomalies in Influenza A cases,
corresponding to known pandemic events and seasonal variations. These findings highlight the effectiveness of
combining wavelet transform analysis with GPR in understanding and predicting infectious disease patterns,
offering valuable insights for public health planning and intervention strategies. The research recommends
extending this approach to other respiratory viruses to assess its broader applicability.
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Citation
Agyemang, E. F. (2025). A Gaussian process regression and wavelet Transform time series approaches to modeling influenza A. Computers in Biology and Medicine, 184, 109367.
