In pytorch RNN implementation, there are two biases, b_ih
and b_hh
.
Why is this? Is it different from using one bias? If yes, how? Will it affect performance or efficiency?
2 Answers
Actually, the previous (accepted) answer is wrong. The second bias parameter is required only due to compatibility with CuDNN. See same code documentation:
class RNNBase(Module):
...
def __init__(self, ...):
...
w_ih = Parameter(torch.empty((gate_size, layer_input_size), **factory_kwargs))
w_hh = Parameter(torch.empty((gate_size, real_hidden_size), **factory_kwargs))
b_ih = Parameter(torch.empty(gate_size, **factory_kwargs))
# Second bias vector included for CuDNN compatibility. Only one <--- this
# bias vector is needed in standard definition. <--- comment
b_hh = Parameter(torch.empty(gate_size, **factory_kwargs))
...
-
1But the obvious follow-up question: Why does CuDNN wants to have two bias parameters?– AlbertApr 19, 2023 at 7:29
The formular in Pytorch Document in RNN is self-explained. That is b_ih
and b_hh
in the equation.
You may think that b_ih
is bias for input (which pair with w_ih
, weight for input) and b_hh
is bias for hidden (pair with w_hh
, weight for hidden)
-
For more context, no; you don't need two. But for historical reasons, there are two.– J369Oct 26, 2020 at 2:24