5.2 Time-series models
A time-series is a sequence of evenly spaced events (numerical data observed at regular intervals of time)
Time-series forecasts predict the future based solely of the past values of the variable
Other variables are ignored
Common time-series models are:
- Moving averages
- Exponential smoothing
- Trend projections
- Decomposition
Regression models (simple and multiple) are used in trend projections and one type of decomposition model
Regular time-series are annually, quarterly, daily, hourly data, etc.
Time-series data are usually visualized using two-dimensional line plot
The vertical axis measures the variable of interest, while the horizontal axis corresponds to the time periods

FIGURE 5.3: Monthly, quarterly and annual time-series of retail trade (except of motor vehicles and motorcycles)