Applies a linear transformation to the incoming data: y = xA^T + b
Usage
nn_linear(in_features, out_features, bias = TRUE)
Arguments
in_features
size of each input sample
out_features
size of each output sample
bias
If set to FALSE, the layer will not learn an additive bias.
Default: TRUE
Shape
Input: (N, *, H_in) where * means any number of
additional dimensions and H_in = in_features.
Output: (N, *, H_out) where all but the last dimension
are the same shape as the input and :math:H_out = out_features.
Attributes
weight: the learnable weights of the module of shape
(out_features, in_features). The values are
initialized from \(U(-\sqrt{k}, \sqrt{k})\)s, where
\(k = \frac{1}{\mbox{in\_features}}\)
bias: the learnable bias of the module of shape \((\mbox{out\_features})\).
If bias is TRUE, the values are initialized from
\(\mathcal{U}(-\sqrt{k}, \sqrt{k})\) where
\(k = \frac{1}{\mbox{in\_features}}\)