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MSc in Business Administration and Data Science

Pre­dict­ive Ana­lyt­ics

About the course

What you will learn

  • Identify and describe key features of time series data such as trend, seasonality, structural breaks and outliers.
  • Evaluate data quality and reliability, and reflect on practical challenges related to the data quality.
  • Apply various time series forecasting models
  • Assess model assumptions such as stationarity
  • Compare forecasting models using relevant evaluation metrics. Justify the choice of model for a given forecasting problem and data.
  • Evaluate a forecasting analysis conducted by another person/researcher.
  • Interpret model output and forecasts.
  • Communicate analysis and results clearly in both academic and policy context.
  • Reflect critically on modelling decisions.
  • Use R to implement forecasting models, document analysis, and present results in a transparent and reproducible manner.