Publication date: 11/10/2021

In this example, you use a Box-Cox transformation to analyze the Passengers column in the Seriesg.jmp data table. The Lambda value is set to zero, which makes the Box-Cox transformation an approximate log transformation. The script in the Seriesg.jmp data table runs a time series analysis on the Log Passengers column. By using the Box-Cox transformation for the analysis, the results are easier to interpret since all forecasts are transformed back and reported on the original scale.

1. Select Help > Sample Data Library and open Time Series/Seriesg.jmp.

2. Select Analyze > Specialized Modeling > Time Series.

3. Select Passengers and click Y, Time Series.

4. Select Time and click X, Time ID.

5. Select Use Box-Cox Transformation.

Use the default value of 0 for Lambda.

6. Click OK.

7. Click the red triangle next to Time Series Box-Cox Transformed Passengers and select Seasonal ARIMA.

8. In the ARIMA section of the Seasonal ARIMA Specification window, set the following parameters.

– Set p, Autoregressive Order to 0.

– Set d, Differencing Order to 1

– Set q, Moving Average Order to 1

9. In the Seasonal ARIMA section of the Seasonal ARIMA Specification window, set the following parameters.

– Set P, Autoregressive Order to 0

– Set D, Differencing Order to 1

– Set Q, Moving Average Order to 1

10. Deselect Intercept to run a model without an intercept.

Your window should now match the window shown in Figure 18.22.

Figure 18.22 Seasonal ARIMA Specifications

11. Click Estimate.

Figure 18.23 Seasonal ARIMA Model for Box-Cox Transformed Passengers Data

The parameter estimates are equivalent to those obtained from running the same model on the Log Passengers column. However, the forecasts and prediction intervals in Figure 18.23 are on the original scale.

Want more information? Have questions? Get answers in the JMP User Community (community.jmp.com).