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Is your feature request related to a problem? Please describe.
In the domain of multilabel-classification, data must be partitioned s.t. labels and label pairs are balanced between train, val, and test (see this paper)
Use-cases/examples of this new feature
This has been implemented in scikit-multilearn but unfortunately mostly left abandoned. Would be nice to pick up and include here.
Desired solution/workflow
Could use their reference implementation, as well as the the original implementation which would need to be ported to Python 3.
Discussion
Stepping into classification contexts would be a new direction for astartes, but an interesting one.
The text was updated successfully, but these errors were encountered:
Is your feature request related to a problem? Please describe.
In the domain of multilabel-classification, data must be partitioned s.t. labels and label pairs are balanced between train, val, and test (see this paper)
Use-cases/examples of this new feature
This has been implemented in scikit-multilearn but unfortunately mostly left abandoned. Would be nice to pick up and include here.
Desired solution/workflow
Could use their reference implementation, as well as the the original implementation which would need to be ported to Python 3.
Discussion
Stepping into classification contexts would be a new direction for
astartes
, but an interesting one.The text was updated successfully, but these errors were encountered: