The AAAI-20 Workshop on Privacy-Preserving Artificial Intelligence [Call for Participation]
Workshop URL: https://www2.isye.gatech.edu/~fferdinando3/cfp/PPAI20
Registration URL: https://aaai.org/Conferences/AAAI-20/registration/
Online Registration Deadline: January 10, 2020
Location: AAAI 2020 - Hilton New York Midtown, New York, NY, USA
Date: February 7, 2020 (Full day)
Scope
The availability of massive amounts of data, coupled with high-performance cloud computing platforms, has driven significant progress in artificial intelligence and, in particular, machine learning and optimization. Indeed, much scientific and technological growth in recent years, including in computer vision, natural language processing, transportation, and health, has been driven by large-scale data sets which provide a strong basis to improve existing algorithms and develop new ones. However, due to their large-scale and longitudinal collection, archiving these data sets raise significant privacy concerns. They often reveal sensitive personal information that can be exploited, without the knowledge and/or consent of the involved individuals, for various purposes including monitoring, discrimination, and illegal activities.
The goal of the AAAI-20 Workshop on Privacy-Preserving Artificial Intelligence is to provide a platform for researchers to discuss problems and present solutions related to privacy issues arising within AI applications. The workshop will focus on both theoretical and practical challenges arising in the design of privacy-preserving AI systems and algorithms. It will place particular emphasis on algorithmic approaches to protect data privacy in the context of learning, optimization, and decision making that raise fundamental challenges for existing technologies. Additionally, it will welcome algorithms and frameworks to release privacy-preserving benchmarks and datasets.
Technical Program
The goal of the AAAI-20 Workshop on Privacy-Preserving Artificial Intelligence is to provide a platform for researchers to discuss problems and present solutions related to privacy issues arising within AI applications. The workshop will focus on both theoretical and practical challenges arising in the design of privacy-preserving AI systems and algorithms. It will place particular emphasis on algorithmic approaches to protect data privacy in the context of learning, optimization, and decision making that raise fundamental challenges for existing technologies. Additionally, it will welcome algorithms and frameworks to release privacy-preserving benchmarks and datasets.
Technical Program
• 8:45 - 9:00: Poster Setup and Opening Statement
• 9:00 - 9:45: Invited Talk: Catuscia Palamidessi
• 9:45 - 10:30: Session I
Session Chair: TBA
• Gilie Gefen, Omer Ben-Porat, Moshe Tennenholtz and Elad Yom-Tov.
• 9:00 - 9:45: Invited Talk: Catuscia Palamidessi
• 9:45 - 10:30: Session I
Session Chair: TBA
• Gilie Gefen, Omer Ben-Porat, Moshe Tennenholtz and Elad Yom-Tov.
Privacy, altruism, and experience: Estimating the perceived value of Internet data for medical uses.
• Reza Shokri, Martin Strobel and Yair Zick.
Exploiting Transparency Measures for Membership Inference: a Cautionary Tale.
• Shubhankar Mohapatra, Xi He, Gautam Kamath and Om Thakkar.
Diffindo! Differentially Private Learning with Noisy Labels.
• 10:30 - 11:00: Break and Poster Session
• 11:00 - 11:45: Invited Talk: Boi Faltings
• 11:45 - 12:30: Poster Session
• 12:30 - 14:00: Lunch (not sponsored)
• 14:00 - 14:45: Invited Talk: Aleksandar Nikolov
• 14:45 - 15:30: Session II
Session Chair: TBA
• Kai Wen Wang, Travis Dick and Maria-Florina Balcan.
Scalable and provably accurate algorithms for differentially private distributed decision tree learning.
• Chaitali Ashok Choudhary, Martine De Cock, Rafael Dowsley, Anderson Nascimento and Davis Railsback.
Secure Training of Extra Trees Classifiers over Continuous Data.
• Dominik Fay, Jens Sjölund and Tobias J. Oechtering.
Private Learning for High-Dimensional Targets with PATE.
• 15:30 - 16:00: Break and Poster Session
• 16:00 - 17:00: Poster Session
• 17:00 - 18:00: Panel Discussion
• Reza Shokri, Martin Strobel and Yair Zick.
Exploiting Transparency Measures for Membership Inference: a Cautionary Tale.
• Shubhankar Mohapatra, Xi He, Gautam Kamath and Om Thakkar.
Diffindo! Differentially Private Learning with Noisy Labels.
• 10:30 - 11:00: Break and Poster Session
• 11:00 - 11:45: Invited Talk: Boi Faltings
• 11:45 - 12:30: Poster Session
• 12:30 - 14:00: Lunch (not sponsored)
• 14:00 - 14:45: Invited Talk: Aleksandar Nikolov
• 14:45 - 15:30: Session II
Session Chair: TBA
• Kai Wen Wang, Travis Dick and Maria-Florina Balcan.
Scalable and provably accurate algorithms for differentially private distributed decision tree learning.
• Chaitali Ashok Choudhary, Martine De Cock, Rafael Dowsley, Anderson Nascimento and Davis Railsback.
Secure Training of Extra Trees Classifiers over Continuous Data.
• Dominik Fay, Jens Sjölund and Tobias J. Oechtering.
Private Learning for High-Dimensional Targets with PATE.
• 15:30 - 16:00: Break and Poster Session
• 16:00 - 17:00: Poster Session
• 17:00 - 18:00: Panel Discussion
Accepted Poster Presentations
• Qiu Yuchen, Yuanyuan Qiao, Aimin Zhang and Jie Yang
Residence and Workplace Recovery: User Privacy Risk in Mobility Data
Residence and Workplace Recovery: User Privacy Risk in Mobility Data
• Hanten Chang and Hiroyasu Ando
Privacy Preserving Data Sharing by Integrating Perturbed Distance Matrices
Privacy Preserving Data Sharing by Integrating Perturbed Distance Matrices
• Shreya Sharma, Xing Chaoping and Yang Liu
Privacy-Preserving Deep Learning with SPDZ
Privacy-Preserving Deep Learning with SPDZ
• Liyue Fan
A Survey of Differentially Private Generative Adversarial Networks
A Survey of Differentially Private Generative Adversarial Networks
• Colin Wan, Zheng Li, Alicia Guo and Yue Zhao
SynC: A Unified Framework for Generating Synthetic Population with Gaussian Copula
SynC: A Unified Framework for Generating Synthetic Population with Gaussian Copula
• Ashish Dandekar, Debabrota Basu and Stephane Bressan
Differential Privacy at Risk: Bridging Randomness and Privacy Budget
Differential Privacy at Risk: Bridging Randomness and Privacy Budget
• Ulrich Aïvodji, Sébastien Gambs and Timon Ther
GAMIN: An Adversarial Approach to Black-Box Model Inversion
GAMIN: An Adversarial Approach to Black-Box Model Inversion
• Longfei Zheng, Chaochao Chen, Yingting Liu, Bingzhe Wu, Xibin Wu, Li Wang, Lei Wang and Jun Zhou
Industrial Scale Privacy Preserving Deep Neural Network
Industrial Scale Privacy Preserving Deep Neural Network
• Yingting Liu, Chaochao Chen, Longfei Zheng, Li Wang and Jun Zhou
Privacy Preserving PCA for Multiparty Modeling
Privacy Preserving PCA for Multiparty Modeling
• Clémence Mauger, Gaël Le Mahec and Gilles Dequen
Modeling and Evaluation of k-anonymization Metrics
Modeling and Evaluation of k-anonymization Metrics
• Aleksei Triastcyn and Boi Faltings
Bayesian Differential Privacy for Machine Learning
Bayesian Differential Privacy for Machine Learning
• Himanshu Arora
Guided PATE for Scalable Learning
Guided PATE for Scalable Learning
• Adam Richardson, Aris Filos-Ratsikas, Ljubomir Rokvic and Boi Faltings
Privately Computing Influence in Regression Models
Privately Computing Influence in Regression Models
• Hui Hu and Chao Lan
Inference Attack and Defense Mechanisms on the Distributed Private Fair Machine Learning Framework
Inference Attack and Defense Mechanisms on the Distributed Private Fair Machine Learning Framework
• Yulin Zhang and Dylan Shell
Plans that Remain Private Even in Hindsight
Plans that Remain Private Even in Hindsight
• Junhong Cheng, Wenyan Liu, Xiaoling Wang, Xingjian Lu, Jing Feng and Yi Li
Adaptive Distributed Differential Privacy with SGD
Adaptive Distributed Differential Privacy with SGD
Invited Speakers
· Boi Faltings (EPFL)
· Aleksandar Nikolov (University of Toronto)
· Catuscia Palamidessi (INRIA)
Workshop Committee
· Aleksandar Nikolov (University of Toronto)
· Catuscia Palamidessi (INRIA)
Workshop Committee
· Aws Albarghouthi - University of Wisconsin-Madison
· Carsten Baum - Bar Ilan University
· Aurélien Bellet - INRIA
· Elette Boyle - Technion
· Mark Bun - Boston University
· Kamalika Chaudhuri - University of California San Diego
· Graham Cormode - The University of Warwick
· Marco Gaboardi - Boston University
· Antti Honkela - University of Helsinki
· Peter Kairouz - Google AI
· Kim Laine - Microsoft
· Audra McMillan - Northeastern University
· Sebastian Meiser - University College London
· Ilya Mironov - Google
· Aleksandar Nikolov - University of Toronto
· Kobbi Nissim - Georgetown University
· Catuscia Palamidessi - INRIA
· Reza Shokri - National University of Singapore
· Jonathan Ullman - Northeastern University
· Xiao Wang - Northwestern University
Workshop Chairs
· Ferdinando Fioretto (Syracuse University)
· Pascal Van Hentenryck (Georgia Institute of Technology)
· Rachel Cummings (Georgia Institute of Technology)
· Carsten Baum - Bar Ilan University
· Aurélien Bellet - INRIA
· Elette Boyle - Technion
· Mark Bun - Boston University
· Kamalika Chaudhuri - University of California San Diego
· Graham Cormode - The University of Warwick
· Marco Gaboardi - Boston University
· Antti Honkela - University of Helsinki
· Peter Kairouz - Google AI
· Kim Laine - Microsoft
· Audra McMillan - Northeastern University
· Sebastian Meiser - University College London
· Ilya Mironov - Google
· Aleksandar Nikolov - University of Toronto
· Kobbi Nissim - Georgetown University
· Catuscia Palamidessi - INRIA
· Reza Shokri - National University of Singapore
· Jonathan Ullman - Northeastern University
· Xiao Wang - Northwestern University
Workshop Chairs
· Ferdinando Fioretto (Syracuse University)
· Pascal Van Hentenryck (Georgia Institute of Technology)
· Rachel Cummings (Georgia Institute of Technology)
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