First order exponential smoothing or simple exponential smoothing is suitable with constant variance and no seasonality. The approach is usually recommended to make short-term forecast. Chapter 2, Understanding Time Series data, has introduced the naïve method for the forecasting where prediction in horizon h is defined as value of t (or the last observation):
The approach is extended by simple moving average, which extends the naïve approach using the mean of multiple historical points:
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The approach assumes equal weight to all historical observations, as shown in the following figure:
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As the window size for moving average increases, the weights assigned to each observation become smaller. The first order exponential extends this current approach by providing...