PrivateNLP 2024: Fifth Workshop on Privacy in Natural Language Processing at 
ACL 2024

1st Call For Papers

ACL PrivateNLP is a full day workshop taking place on August 15, 2024 in 
conjunction with ACL 2024.

Workshop website: https://sites.google.com/view/privatenlp/

Important Dates:

• Submission Deadline: May 17, 2024
• Acceptance Notification: June 17, 2024
• Camera-ready versions: July 01, 2024
• Workshop: August 15, 2024

Privacy-preserving data analysis has become essential in the age of Large 
Language Models (LLMs) where access to vast amounts of data can provide gains 
over tuned algorithms. A large proportion of user-contributed data comes from 
natural language e.g., text transcriptions from voice assistants.

It is therefore important to curate NLP datasets while preserving the privacy 
of the users whose data is collected, and train LLMs models that only retain 
non-identifying user data.

The workshop aims to bring together practitioners and researchers from academia 
and industry to discuss the challenges and approaches to designing, building, 
verifying, and testing privacy preserving systems in the context of Natural 
Language Processing.

Topics of interest include but are not limited to:

* Privacy in Large Language Models
* Generating privacy preserving test sets
* Inference and identification attacks
* Generating Differentially private derived data
* NLP, privacy and regulatory compliance
* Private Generative Adversarial Networks
* Privacy in Active Learning and Crowdsourcing
* Privacy and Federated Learning in NLP
* User perceptions on privatized personal data
* Auditing provenance in language models
* Continual learning under privacy constraints
* NLP and summarization of privacy policies
* Ethical ramifications of AI/NLP in support of usable privacy
* Homomorphic encryption for language models

Submissions:
Accepted papers will be presented orally or as posters and included in the 
workshop proceedings. Submissions are open to all, and are to be submitted 
anonymously. All papers will be refereed through a double-blind peer review 
process by at least three reviewers with final acceptance decisions made by the 
workshop organizers.

We'll be using OpenReview - the final submission link will be specified later

Organizers:

Sepideh Ghanavati, University of Maine
Abhilasha Ravichander, Allen AI
Niloofar Mireshghallah, University of Washington
Ivan Habernal, Paderborn University
Seyi Feyisetan, Amazon
Patricia Thaine, Private AI

Contact us: [email protected]
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