Question: Suppose we have a deep MLP classifier and L hidden layers as follows. hi = sigma ( Wihi 1 + bi ) i =

Suppose we have a deep MLP classifier and L hidden layers as follows.
hi =\sigma (Wihi1+ bi)i =1,..., L (9)
where the input data vector h0= x in R
D0\times 1 and \sigma is the nonlinear activation function. Weights
and the bias vector of the i-th layer are Wi in R
Di\times Di1 and bi in R
Di\times 1
respectively. The readout
function is the softmax. In other words, the probability of the input x belong to the class k is,

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