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[RC] AdaShift: Decorrelation and Convergence of Adaptive Learning Rate Methods [HkgTkhRcKQ] #102

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reproducibility-org opened this issue Nov 23, 2018 · 1 comment
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complete Paper reproducibility complete openreview-comment OpenReview Public comment has been provided

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reproducibility-org commented Nov 23, 2018

Team Name Affiliation
adadream Skolkovo Institute of Science and Technology, National Research University Higher School of Economics; Skolkovo Institute of Science and Technology, Moscow Institute of Physics and Technology; Skolkovo Institute of Science and Technology, National Research University Higher School of Economics
@reproducibility-org reproducibility-org added the in-progress Paper reproducibility in-progress label Nov 23, 2018
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mknbv commented Jan 7, 2019

@reproducibility-org complete

mknbv added a commit to mknbv/iclr_2019 that referenced this issue Jan 7, 2019
mknbv added a commit to mknbv/iclr_2019 that referenced this issue Jan 7, 2019
@reproducibility-org reproducibility-org added complete Paper reproducibility complete openreview-comment OpenReview Public comment has been provided and removed in-progress Paper reproducibility in-progress labels Jan 7, 2019
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