Workshop
Algorithmic Fairness through the Lens of Causality and Privacy
Awa Dieng · Miriam Rateike · Golnoosh Farnadi · Ferdinando Fioretto · Matt Kusner · Jessica Schrouff
Room 392
Sat 3 Dec, 5:30 a.m. PST
As machine learning models permeate every aspect of decision making systems in consequential areas such as healthcare and criminal justice, it has become critical for these models to satisfy trustworthiness desiderata such as fairness, interpretability, accountability, privacy and security. Initially studied in isolation, recent work has emerged at the intersection of these different fields of research, leading to interesting questions on how fairness can be achieved using a causal perspective and under privacy concerns.
Indeed, the field of causal fairness has seen a large expansion in recent years notably as a way to counteract the limitations of initial statistical definitions of fairness. While a causal framing provides flexibility in modelling and mitigating sources of bias using a causal model, proposed approaches rely heavily on assumptions about the data generating process, i.e., the faithfulness and ignorability assumptions. This leads to open discussions on (1) how to fully characterize causal definitions of fairness, (2) how, if possible, to improve the applicability of such definitions, and (3) what constitutes a suitable causal framing of bias from a sociotechnical perspective?
Additionally, while most existing work on causal fairness assumes observed sensitive attribute data, such information is likely to be unavailable due to, for example, data privacy laws or ethical considerations. This observation has motivated initial work on training and evaluating fair algorithms without access to sensitive information and studying the compatibility and trade-offs between fairness and privacy. However, such work has been limited, for the most part, to statistical definitions of fairness raising the question of whether these methods can be extended to causal definitions.
Given the interesting questions that emerge at the intersection of these different fields, this workshop aims to deeply investigate how these different topics relate, but also how they can augment each other to provide better or more suited definitions and mitigation strategies for algorithmic fairness.
Schedule
Sat 5:30 a.m. - 5:40 a.m.
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Opening remarks - online
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Opening remarks by organizers
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SlidesLive Video |
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Sat 5:40 a.m. - 6:10 a.m.
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Invited Talk
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Talk
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SlidesLive Video |
Razieh Nabi 🔗 |
Sat 6:10 a.m. - 6:20 a.m.
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Invited talk Q&A
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Q&A
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Sat 6:20 a.m. - 6:50 a.m.
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Invited Talk
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Talk
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SlidesLive Video |
Deirdre Mulligan 🔗 |
Sat 6:50 a.m. - 7:00 a.m.
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Invited talk Q&A
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Q&A
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Sat 7:00 a.m. - 7:30 a.m.
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Online Roundtables - please use the zoom link corresponding to the table you would like to join
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Roundtables
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Sat 7:00 a.m. - 7:30 a.m.
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Causality Roundtable ( online roundtable ) > link | Dhanya Sridhar · Amanda Coston 🔗 |
Sat 7:00 a.m. - 7:30 a.m.
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Privacy Roundtable ( online roundtable ) > link | Ulrich Aïvodji 🔗 |
Sat 7:00 a.m. - 7:30 a.m.
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Ethics Roundtable ( online roundtable ) > link | Negar Rostamzadeh · Sina Fazelpour · Nyalleng Moorosi 🔗 |
Sat 7:30 a.m. - 8:00 a.m.
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Break
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Sat 8:00 a.m. - 8:10 a.m.
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Opening remarks
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Opening remarks by organizers
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Awa Dieng 🔗 |
Sat 8:10 a.m. - 8:40 a.m.
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Invited Talk
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Talk
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SlidesLive Video |
Nicolas Papernot 🔗 |
Sat 8:40 a.m. - 8:55 a.m.
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Invited talk Q&A
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Q&A
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Sat 8:55 a.m. - 9:00 a.m.
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coffee break
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Sat 9:00 a.m. - 9:10 a.m.
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Disparate Impact in Differential Privacy from Gradient Misalignment
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Oral
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link
SlidesLive Video |
Maria Esipova · Atiyeh Ashari · Yaqiao Luo · Jesse Cresswell 🔗 |
Sat 9:10 a.m. - 9:15 a.m.
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Contributed talk Q&A
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Q&A
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Sat 9:15 a.m. - 9:25 a.m.
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Practical Approaches for Fair Learning with Multitype and Multivariate Sensitive Attributes
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Oral
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SlidesLive Video |
Tennison Liu · Alex Chan · Boris van Breugel · Mihaela van der Schaar 🔗 |
Sat 9:25 a.m. - 9:30 a.m.
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Contributed talk Q&A
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Q&A
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Sat 9:30 a.m. - 9:40 a.m.
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Tensions Between the Proxies of Human Values in AI
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Oral
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link
SlidesLive Video |
Teresa Datta · Daniel Nissani · Max Cembalest · Akash Khanna · Haley Massa · John Dickerson 🔗 |
Sat 9:40 a.m. - 9:45 a.m.
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Contributed talk Q&A
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Q&A
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Sat 9:45 a.m. - 9:55 a.m.
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Stochastic Differentially Private and Fair Learning
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Oral
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link
SlidesLive Video |
Andrew Lowy · Devansh Gupta · Meisam Razaviyayn 🔗 |
Sat 9:55 a.m. - 10:00 a.m.
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Contributed Talk Q&A
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Live Questions
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Sat 10:00 a.m. - 11:00 a.m.
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In-person Roundtables - not livestreamed
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Roundtables
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Sat 11:00 a.m. - 12:00 p.m.
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Lunch break
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Sat 12:00 p.m. - 12:30 p.m.
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Invited Talk
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Talk
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SlidesLive Video |
Catuscia Palamidessi 🔗 |
Sat 12:30 p.m. - 12:45 p.m.
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Invited talk Q&A
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Q&A
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Sat 12:45 p.m. - 12:50 p.m.
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coffee break
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Sat 12:50 p.m. - 1:00 p.m.
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Causality for Temporal Unfairness Evaluation and Mitigation
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Oral
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link
SlidesLive Video |
Aida Rahmattalabi · Alice Xiang 🔗 |
Sat 1:00 p.m. - 1:05 p.m.
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Contributed talk Q&A
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Q&A
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Sat 1:05 p.m. - 1:15 p.m.
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Causal Discovery for Fairness
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Oral
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link
SlidesLive Video |
Ruta Binkyte-Sadauskiene · Karima Makhlouf · Carlos Pinzon · Sami Zhioua · Catuscia Palamidessi 🔗 |
Sat 1:15 p.m. - 1:20 p.m.
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Contributed talk Q&A
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Q&A
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Sat 1:20 p.m. - 1:30 p.m.
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coffee break
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coffee break
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Sat 1:30 p.m. - 2:15 p.m.
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Panel
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Panel
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SlidesLive Video |
Kristian Lum · Rachel Cummings · Jake Goldenfein · Sara Hooker · Joshua Loftus 🔗 |
Sat 2:15 p.m. - 2:55 p.m.
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Poster Session
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poster session
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Sat 2:50 p.m. - 2:55 p.m.
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Closing remarks
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Closing remarks
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SlidesLive Video |
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Tier Balancing: Towards Dynamic Fairness over Underlying Causal Factors
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Poster
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Zeyu Tang · Yatong Chen · Yang Liu · Kun Zhang 🔗 |
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Fairness of Interaction in Ranking under Exposure, Selection, and Trust Bias
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Poster
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Zohreh Ovaisi 🔗 |
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Equality of Effort via Algorithmic Recourse
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Poster
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Francesca Raimondi · Andrew Lawrence · Hana Chockler 🔗 |
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Counterfactual Situation Testing: Fairness given the Difference
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Poster
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Jose Alvarez · Salvatore Ruggieri 🔗 |
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Learning Counterfactually Invariant Predictors
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Poster
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SlidesLive Video |
Cecilia Casolo · Krikamol Muandet 🔗 |
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Bias Mitigation Framework for Intersectional Subgroups in Neural Networks
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Poster
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SlidesLive Video |
Narine Kokhlikyan · Bilal Alsallakh · Fulton Wang · Vivek Miglani · Aobo Yang · David Adkins 🔗 |
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A Closer Look at the Calibration of Differential Private Learners
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Poster
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SlidesLive Video |
Hanlin Zhang · Xuechen (Chen) Li · Prithviraj Sen · Salim Roukos · Tatsunori Hashimoto 🔗 |
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Can Querying for Bias Leak Protected Attributes? Achieving Privacy With Smooth Sensitivity
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Poster
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SlidesLive Video |
Faisal Hamman · Jiahao Chen · Sanghamitra Dutta 🔗 |
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I Prefer not to Say – Operationalizing Fair and User-guided Data Minimization
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Poster
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SlidesLive Video |
Tobias Leemann · Martin Pawelczyk · Christian Eberle · Gjergji Kasneci 🔗 |
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Minimax Optimal Fair Regression under Linear Model
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Poster
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SlidesLive Video |
Kazuto Fukuchi · Jun Sakuma 🔗 |
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A Deep Dive into Dataset Imbalance and Bias in Face Identification
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Poster
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SlidesLive Video |
Valeriia Cherepanova · Steven Reich · Samuel Dooley · Hossein Souri · John Dickerson · Micah Goldblum · Tom Goldstein 🔗 |
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Pragmatic Fairness: Optimizing Policies with Outcome Disparity Control
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Poster
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SlidesLive Video |
Limor Gultchin · Siyuan Guo · Alan Malek · Silvia Chiappa · Ricardo Silva 🔗 |
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Counterfactual Risk Assessments under Unmeasured Confounding
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Poster
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Amanda Coston · Edward Kennedy · Ashesh Rambachan 🔗 |
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Perception as a Fairness Parameter
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Poster
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Jose Alvarez · Mayra Russo 🔗 |
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Causal Fairness for Affect Recognition
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Poster
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Jiaee Cheong · Sinan Kalkan · Hatice Gunes 🔗 |
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Simple improvements for better measuring private model disparities
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Poster
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Judy Hanwen Shen · Soham De · Sam Smith · Jamie Hayes · Leonard Berrada · David Stutz · Borja De Balle Pigem 🔗 |
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Towards a genealogical approach to explaining algorithmic bias
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Poster
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Marta Ziosi 🔗 |
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Addressing observational biases in algorithmic fairness assessments
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Poster
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Chirag Nagpal · Olawale Salaudeen · Sanmi Koyejo · Stephen Pfohl 🔗 |
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Parity in predictive performance is neither necessary nor sufficient for fairness
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Poster
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Justin Engelmann · Miguel Bernabeu · Amos Storkey 🔗 |
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Caused by Race or Caused by Racism? Limitations in Envisioning Fair Counterfactuals
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Poster
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Evan Dong 🔗 |
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Can Causal (or Counterfactual) Representations benefit from Quantum Computing?
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Poster
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Rakshit Naidu · Daniel Justice 🔗 |
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A Bayesian Causal Inference Approach for Assessing Fairness in Clinical Decision-Making
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Poster
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Linying Zhang · Lauren Richter · Yixin Wang · Anna Ostropolets · Noemie Elhadad · David Blei · George Hripcsak 🔗 |
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"You Can't Fix What You Can't Measure": Privately Measuring Demographic Performance Disparities in Federated Learning
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Poster
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SlidesLive Video |
Marc Juarez · Aleksandra Korolova 🔗 |
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Privacy Aware Experimentation over Sensitive Groups: A General Chi Square Approach
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Poster
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SlidesLive Video |
Rina Friedberg · Ryan Rogers 🔗 |
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When Fairness Meets Privacy: Fair Classification with Semi-Private Sensitive Attributes
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Poster
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SlidesLive Video |
Canyu Chen · Yueqing Liang · Xiongxiao Xu · Shangyu Xie · Yuan Hong · Kai Shu 🔗 |
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Fairness Certificates for Differentially Private Classification
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Poster
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SlidesLive Video |
Paul Mangold · Michaël Perrot · Marc Tommasi · Aurélien Bellet 🔗 |
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Conditional Demographic Parity Through Optimal Transport
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Poster
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SlidesLive Video |
Luhao Zhang · Mohsen Ghassemi · Ivan Brugere · Niccolo Dalmasso · Alan Mishler · Vamsi Potluru · Tucker Balch · Manuela Veloso 🔗 |
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Adjusting the Gender Wage Gap with a Low-Dimensional Representation of Job History
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Poster
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SlidesLive Video |
Keyon Vafa · Susan Athey · David Blei 🔗 |
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Privacy-Preserving Group Fairness in Cross-Device Federated Learning
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Poster
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SlidesLive Video |
Sikha Pentyala · Nicola Neophytou · Anderson Nascimento · Martine De Cock · Golnoosh Farnadi 🔗 |
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Predictive Multiplicity in Probabilistic Classification
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Poster
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SlidesLive Video |
Jamelle Watson-Daniels · David Parkes · Berk Ustun 🔗 |