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The AAAI-21 Workshop on Privacy-Preserving Artificial Intelligence (PPAI-21)
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. It has 
profoundly impacted several areas, including computer vision, natural language 
processing, and transportation. However, the use of rich data sets also raises 
significant privacy concerns: They often reveal personal sensitive 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 second AAAI Workshop on Privacy-Preserving Artificial Intelligence 
(PPAI-21) held at the Thirty-Fifth AAAI Conference on Artificial Intelligence 
(AAAI-21) builds on the success of last year’s AAAI PPAI to provide a platform 
for researchers, AI practitioners, and policymakers to discuss technical and 
societal issues and present solutions related to privacy in AI applications. 
The workshop will focus on both the theoretical and practical challenges 
related to the design of privacy-preserving AI systems and algorithms and will 
have strong multidisciplinary components, including soliciting contributions 
about policy, legal issues, and societal impact of privacy in AI.
PPAI-21 will place particular emphasis on: (1) Algorithmic approaches to 
protect data privacy in the context of learning, optimization, and decision 
making that raise fundamental challenges for existing technologies; (2) Privacy 
challenges created by the governments and tech industry response to the 
Covid-19 outbreak; (3) Social issues related to tracking, tracing, and 
surveillance programs; and (4) Algorithms and frameworks to release 
privacy-preserving benchmarks and data sets.
Topics
The workshop organizers invite paper submissions on the following (and related) 
topics:

  *   Applications of privacy-preserving AI systems
  *   Attacks on data privacy
  *   Differential privacy: theory and applications
  *   Distributed privacy-preserving algorithms
  *   Human rights and privacy
  *   Privacy issues related to the Covid-19 outbreak
  *   Privacy policies and legal issues
  *   Privacy preserving optimization and machine learning
  *   Privacy preserving test cases and benchmarks
  *   Surveillance and societal issues

Finally, the workshop will welcome papers that describe the release of 
privacy-preserving benchmarks and data sets that can be used by the community 
to solve fundamental problems of interest, including in machine learning and 
optimization for health systems and urban networks, to mention but a few 
examples.
Important Dates

  *   November 9, 2020 – Submission Deadline
  *   November 30, 2020 – Acceptance Notification
  *   February 8 and 9, 2020 – Workshop Date

Format
The workshop will be a one-day and a half meeting. The first session (half day) 
will be dedicated to privacy challenges, particularly those risen by the 
Covid-19 pandemic tracing and tracking policy programs. The second, day-long, 
session will be dedicated to the workshop technical content about 
privacy-preserving AI. The workshop will include a number of (possibly 
parallel) technical sessions, a virtual poster session where presenters can 
discuss their work, with the aim of further fostering collaborations, multiple 
invited speakers covering crucial challenges for the field of 
privacy-preserving AI applications, including policy and societal impacts, a 
number of tutorial talks, and will conclude with a panel discussion.
Attendance
Attendance is open to all. At least one author of each accepted submission must 
be present at the workshop.

Submission
Submission URL:  https://cmt3.research.microsoft.com/PPAI2021

Submissions of technical papers can be up to 7 pages excluding references and 
appendices. Short or position papers of up to 4 pages are also welcome. All 
papers must be submitted in PDF format, using the AAAI-21 author kit. Papers 
will be peer-reviewed and selected for oral and/or poster presentation at the 
workshop.
Invited Speakers (TBD)

Workshop Chairs

  *   Ferdinando Fioretto (Syracuse University)
  *   Pascal Van Hentenryck (Georgia Institute of Technology)
  *   Richard W. Evans (Rice University)
Workshop Committee (Incomplete list)

  *   Aws Albarghouthi - University of Wisconsin-Madison
  *   Carsten Baum - Aarhus University
  *   Aurélien Bellet - INRIA
  *   Mark Bun - Boston University
  *   Albert Cheu - Northeastern University
  *   Graham Cormode - University of Warwick
  *   Rachel Cummings - Georgia Tech
  *   Xi He - University of Waterloo
  *   Antti Honkela -University of Helsinki
  *   Mohamed Ali Kaafar - Macquarie University and CSIRO-Data61
  *   Kim Laine - Microsoft Research
  *   Olga Ohrimenko - The University of Melbourne
  *   Catuscia Palamidessi - Laboratoire d'informatique de l'École polytechnique
  *   Marco Romanelli - INRIA
  *   Reza Shokri - NUS
  *   Vikrant Singhal - Northeastern University
Workshop URL: https://ppai21.github.io/
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