Overview

With the increasing deployment of machine learning in diverse applications affecting our daily lives, ethical and legal implications are rising to the forefront. Governments worldwide have responded by implementing regulatory policies to safeguard algorithmic decisions and data usage practices. However, there appears to be a considerable gap between current machine learning research and these regulatory policies. Translating these policies into algorithmic implementations is highly non-trivial, and there may be inherent tensions between different regulatory principles.

This workshop aims to provide a platform for: i) discussing various algorithmic, technical, and policy challenges that arise when operationalizing various guidelines outlined in existing regulatory frameworks, and ii) finding solutions to mitigate and address these challenges.

Please check out our Call for Papers.

Keynote Talks

Designing ML Systems that can be Regulated: Challenges and Opportunities

Portrait

Rayid Ghani

Distinguished Career Professor

Carnegie Mellon University

Regulating Code: What the European Union has in stock for the governance of Artificial Intelligence, foundation models, and generative AI

Portrait

Sandra Wachter

Professor

University of Oxford

Fine-Tuning Games: Modeling the Ecosystem of Machine Learning Applications and their Development

Portrait

Jon Kleinberg

Tisch University Professor

Cornell University

Path to trustworthy and responsible AI

Portrait

Elham Tabassi

Associate Director for Emerging Technologies

National Institute of Standards and Technology (NIST)

Regulating ML: Rights, Transparency, and Agency

Portrait

Margaret Mitchell

Researcher and Chief Ethics Scientist

Hugging Face

Portrait

Yacine Jernite

ML and Society Lead

Hugging Face

Connecting provable guarantees and regulation of LLMs.

Portrait

Tatsunori Hashimoto

Assistant Professor

Stanford University

Panel Discussion

Rayid Ghani

Rayid Ghani

Carnegie Mellon
University  

Jon Kleinberg

Jon Kleinberg

Cornell University
   

Margaret Mitchell

Margaret Mitchell

Hugging Face
   

Deborah Raji

Deborah Raji

Mozilla Foundation
UC Berkeley  

Elham Tabassi

Elham Tabassi

NIST
   

Schedule

Dec 16, 2023; New Orleans Convention Center (Room 215 - 216)

TimeActivity
08:55-09:00Opening
09:00-09:30Keynote [Rayid Ghani]: Designing ML Systems that can be Regulated: Challenges and Opportunities
09:30-10:00Keynote [Sandra Wachter]: Regulating Code: What the European Union has in stock for the governance of Artificial Intelligence, foundation models, and generative AI
10:00-10:15Coffee Break
10:15-10:55Oral Presentation: Can copyright be reduced to privacy
Oral Presentation: Merging (EU)-Regulation and Model Reporting
Oral Presentation: Necessity of Processing Sensitive Data for Bias Detection and Monitoring: A Techno-Legal Exploration
10:55-11:25Keynote [Jon Kleinberg]: Fine-Tuning Games: Modeling the Ecosystem of Machine Learning Applications and their Development
11:25-12:20Poster Session
12:20-13:10Lunch Break
13:10-13:35Oral Presentation: SILO Language Models: Isolating Legal Risk In a Nonparametric Datastore
Oral Presentation: Detecting Pretraining Data from Large Language Models
13:35-14:05Keynote [Elham Tabassi]: Path to trustworthy and responsible AI
14:05-14:35Keynote [Meg Mitchell and Yacine Jernite]: Regulating ML: Rights, Transparency, and Agency
14:35-15:00Oral Presentation: Learning from Label Proportions: Bootstrapping Supervised Learners via Belief Propagation
Oral Presentation: Towards a Post-Market Monitoring Framework for Machine Learning-based Medical Devices: A case study
15:00-15:15Coffee Break
15:15-15:45Keynote [Tatsunori Hashimoto]: Connecting provable guarantees and regulation of LLMs.
15:45-16:40Panel Discussion: Deborah Raji, Elham Tabassi, Jon Kleinberg, Margaret Mitchell, Rayid Ghani, Tatsunori Hashimoto
16:40-17:20Oral Presentation: Can LLM-Generated Misinformation Be Detected?
Oral Presentation: Towards Responsible Governance of Biological Design Tools
Oral Presentation: Learning to Walk Impartially on the Pareto Frontier of Fairness, Privacy, and Utility
17:20-17:25Closing Remarks

Additionally, the paper 'Who Leaked the Model? Tracking IP Infringers in Accountable Federated Learning' also received an oral presentation.

Awards

Outstanding Papers

Outstanding Reviewers

Will Fleisher (Georgetown University), Philippe Giabbanelli (Miami University)

Organizers

If you have any questions, please contact us via the following email: regulatableml@googlegroups.com.

Core Organizing Team

Jiaqi Ma

Jiaqi Ma

University of Illinois
Urbana-Champaign

Chirag Agarwal

Chirag Agarwal

Harvard University
 

Sarah Tan

Sarah Tan

Cambia Health
Cornell University

Hima Lakkaraju

Hima Lakkaraju

Harvard University
 

Student Organizers

Usha Bhalla

Usha Bhalla

Harvard University
 

Zana Bucinca

Zana Bucinca

Harvard University
 

Chelsea Chen

Chelsea Chen

Harvard University
 

Junwei Deng

Junwei Deng

University of Illinois
Urbana-Champaign

Xudong Shen

Xudong Shen

National University of
Singapore

Varshini Subhash

Varshini Subhash

Harvard University
Tonita, Inc

Advisory Team

Kelly Cochran

Kelly Cochran

FinRegLab
 

Finale Doshi-Velez

Finale Doshi-Velez

Harvard University
 

Daniele Magazzeni

Daniele Magazzeni

J.P. Morgan
 

Weiwei Pan

Weiwei Pan

Harvard University
 

P-R Stark

P-R Stark

FinRegLab
 

Reviewers

NameAffiliation
Julius AdebayoPrescient Design / Genentech
Chirag AgarwalHarvard University
Syed Ishtiaque AhmedUniversity of Toronto
Maria AntoniakAllen Institute for Artificial Intelligence
Hadi AsghariHumboldt Institute for Internet and Society
Renata BarretoUniversity of California, Berkeley
Usha BhallaHarvard University
Zana BuçincaHarvard University
Sarah Huiyi CenMassachusetts Institute of Technology
Hongyan ChangNational University of Singapore
Zixi ChenHarvard University
Jiahong ChenAmazon
Jiahao ChenResponsible AI LLC
Pin-Yu ChenIBM Research
Hao-Fei ChengCarnegie Mellon University
Myra ChengStanford University
Elliot CreagerUniversity of Waterloo
Madeleine I. G. DaeppMicrosoft Research
Junwei DengUniversity of Illinois at Urbana-Champaign
Drew DimmeryUniversität Vienna
Seyed A. EsmaeiliSimons Laufer Mathematical Sciences Institute
Amir FederColumbia University
Enzo FerranteCONICET / Universidad Nacional del Litoral
Julien FerryLAAS / CNRS
Quintin FettesMeta
Will FleisherGeorgetown University
Timo FreieslebenUniversity of Munich
Filippo GalliScuola Normale Superiore
Dilrukshi GamageTokyo Institute of Technology, Tokyo Institute of Technology
Ruijiang GaoUniversity of Texas, Austin
Diego Garcia-OlanoMeta
Lodewijk L. GelauffStanford University
Avijit GhoshNortheastern University
Sourojit GhoshUniversity of Washington
Philippe GiabbanelliMiami University of Ohio
Catalina GoantaUtrecht University
David Gray GrantUniversity of Florida
Philip GreengardColumbia University
Hangzhi GuoPennsylvania State University
Melissa HallMeta
Tessa HanHarvard University
Leif Hancox-LiCapital One
Saminul HaqueStanford University
Galen HarrisonUniversity of Virginia, Charlottesville
Karthik Rajaraman IyerColumbia University
Gautam KamathUniversity of Waterloo
Allison KoeneckeCornell University
Satyapriya KrishnaHarvard University
Joshua A. KrollNaval Postgraduate School
Dan LeyHarvard University
Elita LoboUniversity of New Hampshire
Xiao MaGoogle Research
Arushi GK MajhaUniversity of Cambridge
Aram H. MarkosyanMeta
Chris MarsdenMonash University
Audra McMillanApple
Ilya MironovMeta
Krikamol MuandetCISPA - Helmholtz Center for Information Security
Alex OesterlingHarvard University
Tina M ParkBrown University
Charvi RastogiCarnegie Mellon University
Sarita RosenstockAustralian National University
Andrea RubbiUniversity of Cambridge
Xudong ShenSea AI Lab
Chandan SinghMicrosoft Research
Varshini SubhashHarvard University
Sarah TanCambia Health / Cornell University
Yan Shuo TanUniversity of California, Berkeley
Leonard TangHarvard University
Savannah ThaisColumbia University
Daniel TingMeta
Fulton WangMeta
Ding WangResearch, Microsoft
Han WuStanford University
Chhavi YadavUniversity of California, San Diego
Zou YangBoston University
Weiwei ZongHenry Ford Health System