I'm using the following snippet of code: enter image description here

The function test_submodels calculates the r^2 testscore of each submodel and tosses out the bad ones (in this case only the svm model), and returns the new list model_names. Then I'm calculating the r^2 scores of my stacked regressor which turns out the be awful. The output of this code can be seen below: score overview

Here is some more clarification regarding the submodels, they are created as such: enter image description here

  • Please re-read How to ask, as it would seem that you missed some crucial points the first time you read it, namely "DO NOT post images of code, data, error messages, etc. - copy or type the text into the question" (emphasis in the original). See why an image of your code is not helpful. – desertnaut Oct 23 '20 at 15:10

I ended up fixing the problem, I had to define the final estimator in the stacking regressor, for example as such: enter image description here

This improves the stacking score to roughly 0.9

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