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QEBA: Query-Efficient Boundary-Based Blackbox Attack
Huichen Li
, Xiaojun Xu
, Xiaolu Zhang
, Shuang Yang
,
Bo Li
Siebel School of Computing and Data Science
Research output
:
Contribution to journal
›
Conference article
›
peer-review
Overview
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Computer Science
Machine Learning
100%
Learning System
100%
Case Study
50%
Attackers
50%
Model Prediction
50%
Adversarial Machine Learning
50%
Deep Neural Network
50%
Microsoft Azure
50%
Adversarial Example
50%
Autonomous Driving
50%
Keyphrases
Black Hole Attack
100%
Boundary Based
100%
Gradient Estimation
28%
Model Prediction
14%
Dimensionality Reduction
14%
Low-magnitude
14%
Machine Learning
14%
Attacker
14%
White-box
14%
Safety-critical
14%
Machine Learning Models
14%
Adversarial Attack
14%
Deep Neural Network
14%
Microsoft Azure
14%
Autonomous Driving
14%
Optimality Analysis
14%
ImageNet Dataset
14%
Gradient Space
14%
Adversarial Examples
14%
Attack Success Rate
14%
Face++
14%
CelebA Dataset
14%
Prediction Label
14%