Vector, Matrix, and Tensor Derivatives
derivative. From the de nition of matrix-vector multiplication, the value ~y 3 is computed by taking the dot product between the 3rd row of W and the vector ~x: ~y 3 = XD j=1 W 3;j ~x j: (2) At this point, we have reduced the original matrix equation (Equation 1) to a scalar equation. This makes it much easier to compute the desired derivatives.
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