Is there a maximum limit to the number of features given as input to a PNN? And how to find the optimum spread value?
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SSG_newbiecoder
on 24 Apr 2018
Commented: SSG_newbiecoder
on 24 Apr 2018
Hello, I am trying to classify ECG arrhythmia conditions using the PNN . Right now I'm considering 5 classes. I have 52 features in the feature matrix. What is the maximum number of features I can give to the PNN? IS there any limit like that? Also how to select the spread value for the PNN? I havent tried implementing any neuralnetworks till now. This is my first attempt. Please forgive if my query is silly.
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Walter Roberson
on 24 Apr 2018
The practical limit on number of features is determined by memory. The theoretical limit... Ummm, if you are training on gpu then it might be 2^14 = 16384 in some cases, as matrix that large on each side would be 2^28 elements and at 4 bytes each that would be 2^32 bytes (2 gigabytes) which might be the address limit on some older gpu.
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Walter Roberson
on 24 Apr 2018
No. I said 2^14 which is 16384. 52 is not much. You could potentially run out of memory if you had tens of thousands of images with 52 features, perhaps.
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