i am designing MLP with back propogation algo with rhoe as a learning factor i need information regarding it how it helps in learning m using it for classifying heart sounds should i give all wts by myself aur take it from data randomly
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i am designing MLP with back propogation algo with rhoe as a learning factor i need information regarding it how it helps in learning m using it for classifying heart sounds should i give all wts by myself aur take it from data randomly
do reply me urgently as i have to appy in ma final year project
http://www.catb.org/~esr/faqs/smart-questions.html
Bzzzt - urgency
Bzzzt - not using google
not familiar with rhoe and a google didnt turn up much on the first page, sorry not my project not my responsibility to do the research, so perhaps you could elaborate and/or spell out what it stands for. Never assume that Everyone, even experts, are familiar with every acronym you use in your little niche of the field. I have worked for 10 different companies and all 10 used different terms for the same things.
As for the initial weights, it is prefered to use random initial weights.
As for training, that depends on your training methodology. Do you use localized training methods, or apply the global error . Using global error, there is no need to sequence the trainign examples. If you use localized training, i.e. test then apply the error, you need to randomly shuffle the examples after every epoch