Hi guys.. 

I am currently working on a ASR project  in which the objective is to 
substitute part of the general ASR framework with some form of neural network, 
to see whether the tested part improves in any way. 

I started working with the feature extraction and tried, to make a neural 
network (NN) that could create MFCC features. I already know what the desired 
output is supposed to be, so the problem boils down to a simple 
input -  output mapping. Problem here is the my NN doesn’t seem to perform that 
well..  and i seem to get pretty large error for some reason. 

I therefore wanted to give random forrest a try, and see whether it could 
provide me a better result. 

I am currently storing my input and output in numpy.ndarrays, in which the 
input and output columns is consistent throughout all the examples, but the 
number of rows changes 
depending on length of the audio file.  

Is it possible with the random forrest implementation in scikit-learn to train 
a random forrest to map an input an output, given they are stored 
numpy.ndarrays?
Or do i have do it in a different way? and if so how?

kind regards

Carl truz
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