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Basic-Forecasting-Principles

Usage of basic forecasting principles to predict Housing starts.

  • Spliting of Data into Training, Holdout (PLS & Bates-Granger weights) & Evaluation
  • Trend, Seasonality, Cycles (MA, AR, ARMA)
  • ADL Models
  • Model Selection (AIC & PLS)
  • Correct Errors (Robust or HAC)
  • Rolling Window
  • h-step ahead forecasts (Iterated & Direct)
  • Forecast Combination (Simple Average, Bates-Granger, Granger Ramanathan & WAIC)
  • Forecast Evaluation (White Noise test, MA(h-1) errors, Mincer Zarnowitz regression & Diebold Mariano test)

Mainly models parametric relationships. Could use ML methods to such as Hybrid learning with non-parametric methods like regression trees to account for the non-linearities.

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Usage of basic forecasting principles to predict Housing starts.

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