Forecasting with time series imaging

  title={Forecasting with time series imaging},
  author={Xixi Li and Yanfei Kang and F. Li},
  journal={Expert Syst. Appl.},
  • Xixi Li, Yanfei Kang, F. Li
  • Published 2020
  • Computer Science, Mathematics
  • Expert Syst. Appl.
  • Feature-based time series representations have attracted substantial attention in a wide range of time series analysis methods. Recently, the use of time series features for forecast model averaging has been an emerging research focus in the forecasting community. Nonetheless, most of the existing approaches depend on the manual choice of an appropriate set of features. Exploiting machine learning methods to automatically extract features from time series becomes crucially important in state-of… CONTINUE READING

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