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I am confused about this. Say I have a weight matrix W(10,20). This expects a 20 dimensional input vector(say X). So, dot(W,X) will be (10,1) and to this I can add a 10 dimensional bias vector.

Now I want to do batch learning. Is it possible to multiplt a batch of input vectors(30 vectors), so that X is now(20,30) and then dot(W,X) will be (10,30). But what about bias. how should I adjust bias to this ?

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I assume the bias is the same for all 30 input vectors. Let me know if this is not the case.

Think of your (10,30) matrix as a collection of 30 10-dimensional result vectors. They are independent, and they are just arranged into a matrix for easier handling.

If you want to add the 10-dimensional bias vector to your 30 result vectors, all you have to do is to copy your 10-dimensional bias vector 30 times into a (10,30) bias matrix. Then, adding the matrices will be the same as adding the bias vector to each of your 30 10-dimensional result vectos

You can obtain this by multiplying

<vertical bias vector>  <outer/tensor product>  <horizontal vector, filled with 30 ones>
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  • Maybe I am missing the point here. It would be useful if people explained that instead of just downvoting? Dec 14, 2015 at 15:24
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    Sorry, it was in inadvertent vote while using mobile device and was unable to reverse it for unknown reason. Down vote gone. Dec 14, 2015 at 19:09
  • Thanks, I was actually looking for a solution using the tile function, This simple solution completely went past my head. :)
    – amartya18x
    Dec 15, 2015 at 6:05
  • It seems that T.dot(W,x) + b.dimshuffle(0,'x') also works.
    – amartya18x
    Dec 15, 2015 at 6:38

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