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Data Poisoning Attacks on Factorization-Based Collaborative Filtering

Data Poisoning Attacks on Factorization-Based Collaborative Filtering

29 August 2016
Bo Li
Yining Wang
Aarti Singh
Yevgeniy Vorobeychik
    AAML
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Papers citing "Data Poisoning Attacks on Factorization-Based Collaborative Filtering"

8 / 58 papers shown
Title
Data Poisoning against Differentially-Private Learners: Attacks and
  Defenses
Data Poisoning against Differentially-Private Learners: Attacks and Defenses
Yuzhe Ma
Xiaojin Zhu
Justin Hsu
SILM
19
157
0
23 Mar 2019
Attacking Graph-based Classification via Manipulating the Graph
  Structure
Attacking Graph-based Classification via Manipulating the Graph Structure
Binghui Wang
Neil Zhenqiang Gong
AAML
28
152
0
01 Mar 2019
Fighting Fire with Fire: Using Antidote Data to Improve Polarization and
  Fairness of Recommender Systems
Fighting Fire with Fire: Using Antidote Data to Improve Polarization and Fairness of Recommender Systems
Bashir Rastegarpanah
Krishna P. Gummadi
M. Crovella
24
119
0
02 Dec 2018
Poisoning Attacks to Graph-Based Recommender Systems
Poisoning Attacks to Graph-Based Recommender Systems
Minghong Fang
Guolei Yang
Neil Zhenqiang Gong
Jia-Wei Liu
AAML
27
201
0
11 Sep 2018
Data Poisoning Attacks in Contextual Bandits
Data Poisoning Attacks in Contextual Bandits
Yuzhe Ma
Kwang-Sung Jun
Lihong Li
Xiaojin Zhu
AAML
17
67
0
17 Aug 2018
Adversarial Attacks on Neural Networks for Graph Data
Adversarial Attacks on Neural Networks for Graph Data
Daniel Zügner
Amir Akbarnejad
Stephan Günnemann
GNN
AAML
OOD
25
1,054
0
21 May 2018
Stealing Hyperparameters in Machine Learning
Stealing Hyperparameters in Machine Learning
Binghui Wang
Neil Zhenqiang Gong
AAML
43
458
0
14 Feb 2018
Using Trusted Data to Train Deep Networks on Labels Corrupted by Severe
  Noise
Using Trusted Data to Train Deep Networks on Labels Corrupted by Severe Noise
Dan Hendrycks
Mantas Mazeika
Duncan Wilson
Kevin Gimpel
NoLa
35
546
0
14 Feb 2018
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