A friend and I are looking at ways of selecting forecasters based on past performance. My friend's preferred method is to select the forecasters who are most correlated with the truth, based on a Pearson correlation.
I've been trying to express to my friend some reasons why I think this method is a bit flawed, using the following example:
| True value | Forecaster 1 | Forecaster 2 |
|:-------------|---------------:|:---------------:|
| 5 | 6 | 51 |
| 10 | 9 | 99 |
| 20 | 21 | 201 |
Forecaster 1’s estimates are ±1 from the true value, while Forecaster 2’s estimates are ±1 from (true value × 100). The Pearson correlation between Forecaster 1 and the truth is .9897, while the Pearson correlation between Forecaster 2 and the truth is > .9999. Recall that according to my friend's method we're selecting the Forecaster who has the highest Pearson correlation with the truth. Thus in this example Forecaster 2 would be selected, even though Forecaster 2’s forecasts are wildly variable and inaccurate relative to Forecaster 1’s.
- Does my example illustrate a genuine problem with my friend's method?
- If so, how can I describe the problem in a more rigorous way? In technical terms, why does the Pearson correlation have this property?
- What kind of constructive solution can I offer? Is there some other type of obvious selection method (e.g. a different type of correlation) that would be more robust?