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SignsGD via zeroth-order oracle
Sijia Liu
, Pin Yu Chen
, Xiangyi Chen
,
Mingyi Hong
Electrical and Computer Engineering
Research output
:
Contribution to conference
›
Paper
›
peer-review
69
Scopus citations
Overview
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Keyphrases
SignSGD
100%
Zeroth-order Oracles
100%
Zeroth-order
77%
Convergence Rate
33%
Neural Network
11%
Black Box
11%
Image Classification
11%
Superior Performance
11%
MNIST
11%
T-convergence
11%
Number of Iterations
11%
Gradient Estimate
11%
Gradient-free
11%
Optimization Variables
11%
CIFAR-10
11%
Gradient Estimator
11%
Stochastic Optimization Algorithm
11%
Adversarial Examples
11%
Black-box Adversarial Attack
11%
Classification Datasets
11%
Robust Deep Learning
11%
Free Operation
11%
Sign Information
11%
Mathematics
Black Box
100%
Stochastic Order
50%
Convergence Rate
50%
Neural Network
50%
Deep Learning Method
50%
Rate of Convergence
50%
Adversarial Attack
50%