I am trying to incorporate PyTorch functionalities into a
scikit-learn environment (in particular Pipelines and GridSearchCV) and therefore have been looking into
skorch. The standard documentation example for neural networks looks like
import torch.nn.functional as F from torch import nn from skorch import NeuralNetClassifier class MyModule(nn.Module): def __init__(self, num_units=10, nonlin=F.relu): super(MyModule, self).__init__() self.dense0 = nn.Linear(20, num_units) self.nonlin = nonlin self.dropout = nn.Dropout(0.5) ... ... self.output = nn.Linear(10, 2) ... ...
where you explicitly pass the input and output dimensions by hardcoding them into the constructor. However, this is not really how
scikit-learn interfaces work, where the input and output dimensions are derived by the
fit method rather than being explicitly passed to the constructors. As a practical example consider
# copied from the documentation net = NeuralNetClassifier( MyModule, max_epochs=10, lr=0.1, # Shuffle training data on each epoch iterator_train__shuffle=True, ) # any general Pipeline interface pipeline = Pipeline([ ('transformation', AnyTransformer()), ('net', net) ]) gs = GridSearchCV(net, params, refit=False, cv=3, scoring='accuracy') gs.fit(X, y)
besides the fact that nowhere in the transformers must one specify the input and output dimensions, the transformers that are applied before the model may change the dimentionality of the training set (think at dimensionality reductions and similar), therefore hardcoding input and output in the neural network constructor just will not do.
Did I misunderstand how this is supposed to work or otherwise what would be a suggested solution (I was thinking of specifying the constructors into the
forward method where you do have
X available for fit already, but I am not sure this is good practice)?