This is seamingly a trivial question, but several have looked at my question and are also perplexed. I created a simple moving average prediction based on 100 data points in JMP. I would like someone's assistantce in replicating, in Excel, the forecast provided by JMP using the coefficients provided by JMP. Writing out the equation using actual numbers would be perfect for my needs. I have looked for sources with more than generalized formulas for hours now. The coefficients are as follows:
Term | Lag | Estimate | Std Error | t Ratio | Prob>|t| | Constant Estimate |
MA1 | 1 | -0.99849 | 0.433763 | -2.3 | 0.0235 | 0.179165 |
Intercept | 0 | 0.179165 | 0.248344 | 0.72 | 0.4724 |
The first 10 data points, forecast and residuals are provided below:
Observation | Actual Y | Predicted Y | Residual Y |
1 | 1.2917 | 0.1792 | 1.1125 |
2 | 3.5004 | 0.7354 | 2.7649 |
3 | 2.1595 | 2.0225 | 0.1370 |
4 | 2.2476 | 0.2819 | 1.9657 |
5 | 2.2791 | 1.7517 | 0.5274 |
6 | 2.3501 | 0.6187 | 1.7315 |
7 | 1.2491 | 1.6633 | -0.4141 |
8 | 0.9596 | -0.1832 | 1.1428 |
9 | 1.2070 | 1.1950 | 0.0120 |
10 | 0.1668 | 0.1899 | -0.0231 |
Could someone provide the math using the numbers in the tables that yields the Predicted Y for Observation 5 and 9 as an example? Thank you!
You should post this in the statistics portion of the forum
I'm not a JMP-User and can offer only a part of the answer (at best). If you put your 1st 10 observations into proc arima:
Data A;
Input Observation Actual;
Datalines;
1 1.2917
2 3.5004
3 2.1595
4 2.2476
5 2.2791
6 2.3501
7 1.2491
8 0.9596
9 1.2070
10 0.1668
;
Run;
Proc ARIMA Data=A;
Identify Var=Actual;
Estimate q=1;
Forecast Lead=0 Out=Result_ARIMA (Keep=Actual Forecast Residual);
Run;
The Result is: My=1.67681, MA1=-0.25377 and
Actual Forecast Residual
1.2917 1.6768075816 -0.385107582
3.5004 1.5790802232 1.9213197768
2.1595 2.164373954 -0.004873954
2.2476 1.6755707359 0.5720292641
2.2791 1.8219693795 0.4571306205
2.3501 1.7928119662 0.5572880338
1.2491 1.8182285508 -0.569128551
0.9596 1.5323818872 -0.572781887
1.207 1.5314547933 -0.324454793
0.1668 1.594471862 -1.427671862
The results calculate as I think they should: 1.579=1,6768-(-0.25377)*-0.3851, etc.
If you double-check your JMP-Input?
Thank you. I'm getting different predicted values from JMP, which likely is the source of my confusion, no doubt caused by me.
Can you post the full data so someone can replicate the results/model?
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