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Data Driven Exploratory Attacks on Black Box Classifiers in Adversarial
  Domains

Data Driven Exploratory Attacks on Black Box Classifiers in Adversarial Domains

23 March 2017
Tegjyot Singh Sethi
M. Kantardzic
    AAML
ArXiv (abs)PDFHTML

Papers citing "Data Driven Exploratory Attacks on Black Box Classifiers in Adversarial Domains"

20 / 20 papers shown
Title
Evaluating Efficacy of Model Stealing Attacks and Defenses on Quantum
  Neural Networks
Evaluating Efficacy of Model Stealing Attacks and Defenses on Quantum Neural Networks
Satwik Kundu
Debarshi Kundu
Swaroop Ghosh
AAML
56
5
0
18 Feb 2024
Understanding Overfitting in Adversarial Training via Kernel Regression
Understanding Overfitting in Adversarial Training via Kernel Regression
Teng Zhang
Kang Li
56
2
0
13 Apr 2023
Secure and Trustworthy Artificial Intelligence-Extended Reality (AI-XR)
  for Metaverses
Secure and Trustworthy Artificial Intelligence-Extended Reality (AI-XR) for Metaverses
Adnan Qayyum
M. A. Butt
Hassan Ali
Muhammad Usman
O. Halabi
Ala I. Al-Fuqaha
Q. Abbasi
Muhammad Ali Imran
Junaid Qadir
84
37
0
24 Oct 2022
A Framework for Understanding Model Extraction Attack and Defense
A Framework for Understanding Model Extraction Attack and Defense
Xun Xian
Min-Fong Hong
Jie Ding
SILMMIACVFedML
37
2
0
23 Jun 2022
I Know What You Trained Last Summer: A Survey on Stealing Machine
  Learning Models and Defences
I Know What You Trained Last Summer: A Survey on Stealing Machine Learning Models and Defences
Daryna Oliynyk
Rudolf Mayer
Andreas Rauber
114
114
0
16 Jun 2022
Exploring Adversarial Examples for Efficient Active Learning in Machine
  Learning Classifiers
Exploring Adversarial Examples for Efficient Active Learning in Machine Learning Classifiers
H. Yu
Shihfeng Zeng
Teng Zhang
Ing-Chao Lin
Yier Jin
AAML
400
1
0
22 Sep 2021
Modeling Realistic Adversarial Attacks against Network Intrusion
  Detection Systems
Modeling Realistic Adversarial Attacks against Network Intrusion Detection Systems
Giovanni Apruzzese
M. Andreolini
Luca Ferretti
Mirco Marchetti
M. Colajanni
AAML
102
109
0
17 Jun 2021
Imitation Privacy
Imitation Privacy
Xun Xian
Xinran Wang
Mingyi Hong
Jie Ding
R. Ghanadan
53
3
0
30 Aug 2020
Adversarial Machine Learning Attacks and Defense Methods in the Cyber
  Security Domain
Adversarial Machine Learning Attacks and Defense Methods in the Cyber Security Domain
Ishai Rosenberg
A. Shabtai
Yuval Elovici
Lior Rokach
AAML
85
12
0
05 Jul 2020
Adversarial Attacks for Multi-view Deep Models
Adversarial Attacks for Multi-view Deep Models
Xuli Sun
Shiliang Sun
AAML
29
0
0
19 Jun 2020
Mind Your Weight(s): A Large-scale Study on Insufficient Machine
  Learning Model Protection in Mobile Apps
Mind Your Weight(s): A Large-scale Study on Insufficient Machine Learning Model Protection in Mobile Apps
Zhichuang Sun
Ruimin Sun
Long Lu
Alan Mislove
90
81
0
18 Feb 2020
A Survey of Game Theoretic Approaches for Adversarial Machine Learning
  in Cybersecurity Tasks
A Survey of Game Theoretic Approaches for Adversarial Machine Learning in Cybersecurity Tasks
P. Dasgupta
J. B. Collins
AAML
38
43
0
04 Dec 2019
Adversarial Security Attacks and Perturbations on Machine Learning and
  Deep Learning Methods
Adversarial Security Attacks and Perturbations on Machine Learning and Deep Learning Methods
Arif Siddiqi
AAML
64
11
0
17 Jul 2019
A framework for the extraction of Deep Neural Networks by leveraging
  public data
A framework for the extraction of Deep Neural Networks by leveraging public data
Soham Pal
Yash Gupta
Aditya Shukla
Aditya Kanade
S. Shevade
V. Ganapathy
FedMLMLAUMIACV
82
56
0
22 May 2019
POBA-GA: Perturbation Optimized Black-Box Adversarial Attacks via
  Genetic Algorithm
POBA-GA: Perturbation Optimized Black-Box Adversarial Attacks via Genetic Algorithm
Jinyin Chen
Mengmeng Su
Shijing Shen
Hui Xiong
Haibin Zheng
AAML
124
68
0
01 May 2019
Curls & Whey: Boosting Black-Box Adversarial Attacks
Curls & Whey: Boosting Black-Box Adversarial Attacks
Yucheng Shi
Siyu Wang
Yahong Han
AAML
131
117
0
02 Apr 2019
A Dynamic-Adversarial Mining Approach to the Security of Machine
  Learning
A Dynamic-Adversarial Mining Approach to the Security of Machine Learning
Tegjyot Singh Sethi
M. Kantardzic
Lingyu Lyu
Jiashun Chen
AAML
100
11
0
24 Mar 2018
Handling Adversarial Concept Drift in Streaming Data
Handling Adversarial Concept Drift in Streaming Data
Tegjyot Singh Sethi
M. Kantardzic
35
59
0
24 Mar 2018
Denoising Dictionary Learning Against Adversarial Perturbations
Denoising Dictionary Learning Against Adversarial Perturbations
John Mitro
D. Bridge
Steven D. Prestwich
AAML
34
5
0
07 Jan 2018
Adversarial Frontier Stitching for Remote Neural Network Watermarking
Adversarial Frontier Stitching for Remote Neural Network Watermarking
Erwan Le Merrer
P. Pérez
Gilles Trédan
MLAUAAML
86
342
0
06 Nov 2017
1