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Docs add example of Resemblance model trained on X and the target y #74

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Matgrb opened this issue Feb 17, 2021 · 0 comments
Open

Docs add example of Resemblance model trained on X and the target y #74

Matgrb opened this issue Feb 17, 2021 · 0 comments
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documentation Improvements or additions to documentation enhancement New feature or request good first issue Good for newcomers

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@Matgrb
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Matgrb commented Feb 17, 2021

Typically when you train the Resemblance model, you provide two data samples X1 and X2, without the labels y1 and y2. This allows you to analyse how the relations between features differ between the two samples.

However, this disregards the relations between the features and the target as well as the shift of the target. One way to tackle that, is including y into one of the columns of X.

It would be helpful to add to the resemblance model docs a section presenting this use case and how to analyse the results and compare them with resemblance model trained on X1 and X2 only.

@Matgrb Matgrb added documentation Improvements or additions to documentation enhancement New feature or request good first issue Good for newcomers labels Feb 17, 2021
@Matgrb Matgrb changed the title Docs with example of Resemblance model trained on X and the target y Docs add example of Resemblance model trained on X and the target y Feb 17, 2021
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Labels
documentation Improvements or additions to documentation enhancement New feature or request good first issue Good for newcomers
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