The fit method of sklearn has a sample_weight parameter to pass weights of the instances, and the learn_one method of river also has that attribute, recently renamed to w in #1457 , currently if we had a list of weights and instances to perform our training using our weights we would have to use the learn_one method manually iterating over our data,
it would be much more comfortable to be able to pass the weights with the instances as it happens with sklearn.
it would be nice to be able to do something like:
from river import datasets
from river import evaluate
from river import metrics
evaluate.progressive_val_score(
model=model,
dataset=datasets.Phishing(),
metric=metrics.ROCAUC(),
print_every=200,
w=weights
)
where weights contain for each instance of the dataset the corresponding weight
The fit method of sklearn has a
sample_weightparameter to pass weights of the instances, and thelearn_onemethod of river also has that attribute, recently renamed towin #1457 , currently if we had a list of weights and instances to perform our training using our weights we would have to use thelearn_onemethod manually iterating over our data,it would be much more comfortable to be able to pass the weights with the instances as it happens with sklearn.
it would be nice to be able to do something like:
where
weightscontain for each instance of the dataset the corresponding weight