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noise shape for dropout #563
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This looks like a good idea, but it also seems like it's equivalent to a |
@MikeInnes Do you mean like using a |
Yes exactly. Though it might be better for |
But if the |
@MikeInnes I made a first version of julia> Dropout(0.5)(randn(5,4), 1)
5×4 Array{Float64,2}:
-0.230536 -0.0 1.02677 -0.903341
-0.605143 0.0 0.748388 0.732854
2.56266 -0.0 -2.79108 -1.59313
-0.613482 -0.0 0.468957 -1.96
-0.87279 -0.0 4.01647 0.647282
julia> Dropout(0.5)(randn(5,4,2), (1,3))
5×4×2 Array{Float64,3}:
[:, :, 1] =
-0.0 -0.0 -1.66134 1.97335
-0.0 0.0 -0.310311 2.57003
0.0 -0.0 1.24803 -3.60845
-0.0 0.0 -1.4593 -0.755723
0.0 0.0 0.8056 4.04177
[:, :, 2] =
-0.0 0.0 -0.532319 -0.836303
0.0 0.0 0.867975 -0.309224
-0.0 -0.0 -2.63861 1.14548
-0.0 0.0 -0.0331286 2.39778
0.0 0.0 -2.47692 -0.358082 |
bump |
src/layers/normalise.jl
Outdated
_dropout_kernel(y::T, p, q) where {T} = y > p ? T(1 / q) : T(0) | ||
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function (a::Dropout)(x) | ||
function (a::Dropout)(x, dims=0) |
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It would be nicer to use dims = :
for all dimensions, like the reduction functions do.
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Got it. What about the dims
question discuss above? I just though it might be more convenient to use dims
as the broadcasted dims, but maybe it's not and dims
as unbroadcasted dims is more intuitive?
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Yes, it's more intuitive if it aligns with how dims
is used everywhere else. For example if you wanted to sum across each image you'd likewise do sum(x, dims = (1, 2, 3))
.
It should be a keyword argument, too.
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Ok, I change the dims
as the unbroadcasted dims and also make it a keyword argument.
Ok, one last thing, I think the We also need to update the |
Do you mean that we should make |
Yes. |
@MikeInnes where should I add the docs? I can't find the old one in the |
Actually, dropout is part of the docs already so that's fine. Just NEWS.md needs updating. |
Co-Authored-By: Mike J Innes <mike.j.innes@gmail.com>
bors r+ |
563: noise shape for dropout r=MikeInnes a=chengchingwen I add the noise shape for dropout, similar to the `noise_shape` argument in [`tf.nn.dropout`](https://www.tensorflow.org/api_docs/python/tf/nn/dropout) Co-authored-by: chengchingwen <adgjl5645@hotmail.com> Co-authored-by: Peter <adgjl5645@hotmail.com>
Build succeeded |
I add the noise shape for dropout, similar to the
noise_shape
argument intf.nn.dropout