Combining Machine Learning with Seasonal-Trend Decomposition using LOESS in Power BI Cover Image

Combining Machine Learning with Seasonal-Trend Decomposition using LOESS in Power BI
Combining Machine Learning with Seasonal-Trend Decomposition using LOESS in Power BI

Author(s): Yanka Aleksandrova, Mihail Radev
Subject(s): Economy, Business Economy / Management, ICT Information and Communications Technologies
Published by: Съюз на учените - Варна
Keywords: seasonal-trend decomposition; STL; machine learning; random forest; forecasting

Summary/Abstract: Time series analysis has been extensively used for forecasting in various industries. A method frequently used for decomposition of time series is Seasonal-Trend decomposition using LOESS (STL). In combination with the machine learning approaches, STL is a helpful method to analyze the seasonal-trend structure of complicated time series. This hybrid approach helps interpret seasonality, trends, and other residual patterns better than when using only predictive machine learning models. The explanation and interpretation of the models can be effectively implemented in the context of Business Intelligence and analytical platforms. In the current paper, a practical approach involving the integration of STL with Random Forest regressor in Power BI has been proposed. It is evidenced from the results that integration of STL decomposition with machine learning provides a robust analytical tool and this allows user to perform a sophisticated time series forecasts right within the engaged interactive dashboards.

  • Issue Year: 13/2024
  • Issue No: 1
  • Page Range: 81-89
  • Page Count: 9
  • Language: English
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