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answered Decision Tree - Can the Entropy of a Node be Zero?
Feb
9
answered Does reducing classes in a classification method improve accuracy?
Feb
1
awarded  Guru
Jan
19
answered ROC curve shows strange pattern
Jan
19
comment ROC curve shows strange pattern
It would be informative to see what the ROC curve looks like with no artificial data.
Nov
10
comment How to preprocess this floating point data to use with scikit - Machine Learning
@lejlot I agree you can do it with regularization but I wouldn't call that "simple PCA".
Nov
10
comment How to preprocess this floating point data to use with scikit - Machine Learning
@lejlot "Simple PCA" won't work when you have fewer samples than features.
Nov
3
awarded  Popular Question
Oct
21
awarded  Nice Answer
Oct
8
awarded  numpy
Oct
7
awarded  Enlightened
Oct
7
awarded  Nice Answer
Jul
25
answered What does “The indices parameter is deprecated and will be removed (assumed True) in 0.17” mean?
Jul
9
comment Can I use a multicategory classification to solve XOR function using a perceptron?
When you says "three inputs", one of them is the bias input, right? And when you say it seems to learn XOR, does it do so consistently, with weights randomized differently each time?
Jun
17
comment Deciding output style for ANN classifier
I would use two. I've found even fairly simple networks tend to converge better with two outputs than one. But to be clear, the choice of using -1 and 1 for the output range vs. 0 and 1 is independent on whether you choose to use multiple outputs. The output range is related to the activation function and the number of outputs is related to the network structure.
Jun
16
answered Deciding output style for ANN classifier
Jun
16
comment Why is there only one hidden layer in a neural network?
It should be noted that the universal representation property applies to representing continuous functions, which is usually not the goal when applying a neural network. Having a second hidden layer can provide significant improvement for many problems.
Jun
11
comment Why does classifier accuracy drop after PCA, even though 99% of the total variance is covered?
Yes, that's a good example where a higher (lower variance) PC is better for classification. That example is also a nearly ideal situation for the linear discriminant I mentioned.
Jun
11
revised Why does classifier accuracy drop after PCA, even though 99% of the total variance is covered?
missing paren
Jun
11
answered Why does classifier accuracy drop after PCA, even though 99% of the total variance is covered?