As per the documentation provided by Scikit learn

hidden_layer_sizes : tuple, length = n_layers - 2, default (100,)

I have little doubt.

In my code what I have configured is

MLPClassifier(algorithm='l-bfgs', alpha=1e-5, hidden_layer_sizes=(5, 2), random_state=1)

so what does 5 and 2 indicates?

What I understand is, 5 is the numbers of hidden layers, but then what is 2?

Ref - http://scikit-learn.org/dev/modules/generated/sklearn.neural_network.MLPClassifier.html#

2 Answers 2


From the link you provided, in parameter table, hidden_layer_sizes row:

The ith element represents the number of neurons in the ith hidden layer

Which means that you will have len(hidden_layer_sizes) hidden layers, and, each hidden layer i will have hidden_layer_sizes[i] neurons.

In your case, (5, 2) means:

  • 1rst hidden layer has 5 neurons
  • 2nd hidden layer has 2 neurons

So the number of hidden layers is implicitely set


Some details that I found online concerning the architecture and the units of the input, hidden and output layers in sklearn.

  • The number of input units will be the number of features
  • For multiclass classification the number of output units will be the number of labels
  • Try a single hidden layer, or if more than one then each hidden layer should have the same number of units
  • The more units in a hidden layer the better, try the same as the number of input features up to twice or even three or four times that

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.