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I have ~ 120 different datasets (different scales, sample size etc) and for each dataset, I predict ONE statistical parameter (doesn't matter what for my question) with different methods. To compare the different methods I use RMSE and MAE across the different datasets. I.e. if $m$ is the method than the RMSE is calculated in the following manner:

$RMSE_m = \sqrt{\frac{1}{n}\sum_{i\in D}(\hat{y}_{im}-y_i)^2}$

where $D$ are the datasets and $n$ the number of datasets. Is this approach suitable to evaluated between different methods $m$ or did I miss something?

Thanks

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  • $\begingroup$ Are you trying to say that method 1 (say a neural net) has better performance than method 2 (say random forest) across the 120 different data sets? $\endgroup$
    – Dave
    Commented Feb 11, 2020 at 17:52
  • $\begingroup$ @Dave I’m not using any Machine Learning methods, I’m predicting e.g the variance using a own method which mainly consists out of integrations. But I don’t think that this plays a role does it ? $\endgroup$
    – T. Tim
    Commented Feb 11, 2020 at 18:18

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