Fairness and Abstraction in Sociotechnical Systems
Andrew D. Selbst,danah boyd,Sorelle A. Friedler,Suresh Venkatasubramanian,Janet Vertesi +4 more
- 29 Jan 2019
- pp 59-68
TL;DR: This paper outlines this mismatch with five "traps" that fair-ML work can fall into even as it attempts to be more context-aware in comparison to traditional data science and suggests ways in which technical designers can mitigate the traps through a refocusing of design in terms of process rather than solutions.
read more
Abstract: A key goal of the fair-ML community is to develop machine-learning based systems that, once introduced into a social context, can achieve social and legal outcomes such as fairness, justice, and due process. Bedrock concepts in computer science---such as abstraction and modular design---are used to define notions of fairness and discrimination, to produce fairness-aware learning algorithms, and to intervene at different stages of a decision-making pipeline to produce "fair" outcomes. In this paper, however, we contend that these concepts render technical interventions ineffective, inaccurate, and sometimes dangerously misguided when they enter the societal context that surrounds decision-making systems. We outline this mismatch with five "traps" that fair-ML work can fall into even as it attempts to be more context-aware in comparison to traditional data science. We draw on studies of sociotechnical systems in Science and Technology Studies to explain why such traps occur and how to avoid them. Finally, we suggest ways in which technical designers can mitigate the traps through a refocusing of design in terms of process rather than solutions, and by drawing abstraction boundaries to include social actors rather than purely technical ones.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
•Posted Content
A Survey on Bias and Fairness in Machine Learning
TL;DR: This survey investigated different real-world applications that have shown biases in various ways, and created a taxonomy for fairness definitions that machine learning researchers have defined to avoid the existing bias in AI systems.
2.8K
A Survey on Bias and Fairness in Machine Learning
TL;DR: In this article, the authors present a taxonomy for fairness definitions that machine learning researchers have defined to avoid the existing bias in AI systems and examine different domains and subdomains in AI showing what researchers have observed with regard to unfair outcomes in the state-of-the-art methods and ways they have tried to address them.
2.6K
•Posted Content
On the Opportunities and Risks of Foundation Models.
Rishi Bommasani,Drew A. Hudson,Ehsan Adeli,Russ B. Altman,Simran Arora,Sydney von Arx,Michael S. Bernstein,Jeannette Bohg,Antoine Bosselut,Emma Brunskill,Erik Brynjolfsson,Shyamal Buch,Dallas Card,Rodrigo Castellon,Niladri S. Chatterji,Annie Chen,Kathleen Creel,Jared Davis,Dora Demszky,Chris Donahue,Moussa Doumbouya,Esin Durmus,Stefano Ermon,John Etchemendy,Kawin Ethayarajh,Li Fei-Fei,Chelsea Finn,Trevor Gale,Lauren Gillespie,Karan Goel,Noah D. Goodman,Shelby Grossman,Neel Guha,Tatsunori Hashimoto,Peter Henderson,John Hewitt,Daniel E. Ho,Jenny Hong,Kyle Hsu,Jing Huang,Thomas Icard,Saahil Jain,Dan Jurafsky,Pratyusha Kalluri,Siddharth Karamcheti,Geoff Keeling,Fereshte Khani,Omar Khattab,Pang Wei Koh,Mark Krass,Ranjay Krishna,Rohith Kuditipudi,Ananya Kumar,Faisal Ladhak,Mina Lee,Tony Lee,Jure Leskovec,Isabelle Levent,Xiang Lisa Li,Xuechen Li,Tengyu Ma,Ali Ahmad Malik,Christopher D. Manning,Suvir Mirchandani,Eric Mitchell,Zanele Munyikwa,Suraj Nair,Avanika Narayan,Deepak Narayanan,Ben Newman,Allen Nie,Juan Carlos Niebles,Hamed Nilforoshan,Julian Nyarko,Giray Ogut,Laurel Orr,Isabel Papadimitriou,Joon Sung Park,Chris Piech,Eva Portelance,Christopher Potts,Aditi Raghunathan,Rob Reich,Hongyu Ren,Frieda Rong,Yusuf H. Roohani,Camilo Ruiz,Jack Ryan,Christopher Ré,Dorsa Sadigh,Shiori Sagawa,Keshav Santhanam,Andy Shih,Krishnan Srinivasan,Alex Tamkin,Rohan Taori,Armin W. Thomas,Florian Tramèr,Rose E. Wang,William Yang Wang,Bohan Wu,Jiajun Wu,Yuhuai Wu,Sang Michael Xie,Michihiro Yasunaga,Jiaxuan You,Matei Zaharia,Michael Zhang,Tianyi Zhang,Xikun Zhang,Yuhui Zhang,Lucia Zheng,Kaitlyn Zhou,Percy Liang +113 more
TL;DR: The authors provides a thorough account of the opportunities and risks of foundation models, ranging from their capabilities (e.g., language, vision, robotics, reasoning, human interaction) and technical principles(e. g.g. model architectures, training procedures, data, systems, security, evaluation, theory) to their applications.
1.3K
Closing the AI accountability gap: defining an end-to-end framework for internal algorithmic auditing
Inioluwa Deborah Raji,Andrew Smart,Rebecca N. White,Margaret Mitchell,Timnit Gebru,Ben Hutchinson,Jamila Smith-Loud,Daniel Theron,Parker Barnes +8 more
- 27 Jan 2020
TL;DR: The proposed auditing framework is intended to contribute to closing the accountability gap in the development and deployment of large-scale artificial intelligence systems by embedding a robust process to ensure audit integrity.
759
PaLM 2 Technical Report
Rohan Anil,Andrew M. Dai,Orhan Firat,Melvin George Johnson,Dmitry Lepikhin,Alexandre Passos,Siamak Shakeri,Emanuel Taropa,Paige Bailey,Zhi Chen,Eric Chu,Jonathan H. Clark,Laurent El Shafey,Yanping Huang,Kathleen S. Meier-Hellstern,Gaurav Mishra,Erica Oliveira Moreira,Mark Omernick,Kevin Robinson,Sebastian Ruder,Yi Pei. Tay,Kefan Xiao,Yuanzhong Xu,Yujing Zhang,Gustavo Hernandez-Abrego,Junwhan Ahn,Jacob Austin,Paul Barham,Jan A. Botha,James Bradbury,Siddhartha Brahma,Kevin Michael Brooks,M. Catasta,Yongzhou Cheng,Colin Cherry,Christopher A. Choquette-Choo,Aakanksha Chowdhery,C Crepy,Shachi Dave,Mostafa Dehghani,Sunipa Dev,Jacob Devlin,M. D'iaz,Nan Du,Ethan Dyer,Vladimir Feinberg,Fan Feng,Markus Freitag,Xavier Garcia,Sebastian Gehrmann,Guy Gur-Ari,Steven Hand,Hadi Hashemi,Le Hou,Joshua Howland,Anren Hu,Jeffrey Hui,Jeremy Scott Hurwitz,Michael Isard,Abe Ittycheriah,Matthew Jagielski,Wenhao Jia,Kathleen Kenealy,Maxim Krikun,Sneha Kudugunta,Katherine Lee,Benjamin N. Lee,Eric Li,Mu Li-Li,Wei Li,Yaguang Li,Jian Li,Hyeontaek Lim,Han Lin,Zhong-Zhong Liu,Frederick Liu,Marcello Maggioni,Aroma Mahendru,Joshua Maynez,Vedant Misra,Maysam Moussalem,Zachary Nado,John Nham,Eric Ni,Andrew Nystrom,Alicia Parrish,Marie Pellat,Martin Polacek,Alex Polozov,Reiner Pope,Siyuan Qiao,Emily Reif,Parker Riley,Alexandra Ros,Aurko Roy,Brennan Saeta,Rajkumar Samuel,Renee Shelby,Ambrose Jay Slone,Daniel Smilkov,David R. So,Daniela Sohn,Simon Tokumine,Vijay K. Vasudevan,Kiran Vodrahalli,Xuezhi Wang,Pidong Wang,Tao Wang,John Wieting,Yuhuai Wu,Ke Xu,Yu Yu Xu,Lin Wu Xue,Pengcheng Yin,Jia Yu,Biao Zhang,Steven X.F. Zheng,Ce Zheng,Wei Zhou,Denny Zhou,Slav Petrov,Yonghui Wu +121 more
TL;DR: The PaLM 2 model as mentioned in this paper is a Transformer-based model trained using a mixture of objectives, which has better multilingual and reasoning capabilities and is more compute-efficient than its predecessor PaLM.
708
References
•Book
When Is Discrimination Wrong
Deborah Hellman
- 01 Jan 2008
TL;DR: In this article, the basic idea of "Demeaning and wrongful discrimination" is discussed, and the discrimination puzzle is solved: when is discrimination wrong, and when it's not the thought that counts.
The Dataset Nutrition Label: A Framework to Drive Higher Data Quality Standards.
Sarah Holland,Ahmed Hosny,Sarah Newman,Joshua Joseph,Kasia Chmielinski +4 more
TL;DR: This study introduces the Dataset Nutrition Label, a diagnostic framework to standardize data analysis before AI model development, improving data quality and robustness, and driving better data collection practices through expectation of explanation.
•Posted Content
The Dataset Nutrition Label: A Framework To Drive Higher Data Quality Standards.
TL;DR: The Dataset Nutrition Label is a diagnostic framework that lowers the barrier to standardized data analysis by providing a distilled yet comprehensive overview of dataset "ingredients" before AI model development.
From Betamax to Blockbuster: video stores and the invention of movies on video
TL;DR: From Betamax to Blockbuster: video stores and the invention of movies on video, by Joshua M. Greenberg, Cambridge, MA, MIT Press, 2008, 214 pp., illus., figs., £19.95 (hardback), ISBN 978-0-262-072...
Interventions over Predictions: Reframing the Ethical Debate for Actuarial Risk Assessment
Chelsea Barabas,Karthik Dinakar,Joichi Ito,Madars Virza,Jonathan L. Zittrain +4 more
- 21 Jan 2018
TL;DR: The authors argue that a core ethical debate surrounding the use of regression in risk assessments is not simply one of bias or accuracy, but rather, it's one of purpose, arguing that if machine learning is operationalized merely in the service of predicting individual future crime, then it becomes difficult to break cycles of criminalization that are driven by the iatrogenic effects of criminal justice system itself.