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Added »concrete droupout« Wrapper #463
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finally made cdroupout for keras-contrib available
Added »concrete droupout«
Feb 18, 2019
One test finally fails due to keras issue. See #12305 |
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- What I did
Implemented the Concrete Dropout paper w.r.t. yaringal's implementation (determines the optimal dropout rate on its own).
- How I did it
Used a keras wrapper. Modifying the keras Dense/Conv2d-Layers itself would result in more elegant code, but this version should work as well.
- How you can verify it
With the attached test file and with the following example call:
The dropout rate should converge to respecively
0.29
,0.33
and0.82
for each layer in above example as visualized in the following plot: