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As discussed with @bellet, it would be useful to have a sort of TupleTransformer object, that would take as __init__ a regular scikit-learn Transformer (so it would be a MetaEstimator), and that would fit/transform on tuples using the given Transformer (instead of the dataset of points)
i.e. it would deduplicate the points inside, fit the transformer on the dataset, and be able to transform it. This would allow to use it in a pipeline like:
from sklearn.decomposition import PCA
from sklearn.pipeline import make_pipeline
from metric_learn import TupleTransformer, ITML
from sklearn.model_selection import cross_val_score
model = make_pipeline(TupleTransformer(PCA()), ITML())
cross_val_score(model, pairs, y_pairs)It could also be useful in some cases to have an way to use metric learning algorithms to transform tuples, like a transform_tuples method for instance
There may be other options too, this issue is to discuss about this
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