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Author Information
Yacov Crammer (Technion)
Michael Kearns (University of Pennsylvania)
Michael Kearns is Professor and National Center Chair in the Computer and Information Science department at the University of Pennsylvania. His research interests include topics in machine learning, algorithmic game theory, social networks, and computational finance. Prior to joining the Penn faculty, he spent a decade at AT&T/Bell Labs, where he was head of AI Research. He is co-director of Penn’s Warren Center for Network and Data Sciences (warrencenter.upenn.edu), and founder of Penn’s Networked and Social Systems Engineering (NETS) undergraduate program (www.nets.upenn.edu). Kearns consults extensively in technology and finance, and is a Fellow of the Association for the Advancement of Artificial Intelligence and the American Academy of Arts and Sciences.
Jennifer Wortman Vaughan (Microsoft Research)

Jenn Wortman Vaughan is a Senior Principal Researcher at Microsoft Research, New York City. Her research background is in machine learning and algorithmic economics. She is especially interested in the interaction between people and AI, and has often studied this interaction in the context of prediction markets and other crowdsourcing systems. In recent years, she has turned her attention to human-centered approaches to transparency, interpretability, and fairness in machine learning as part of MSR's FATE group and co-chair of Microsoft’s Aether Working Group on Transparency. Jenn came to MSR in 2012 from UCLA, where she was an assistant professor in the computer science department. She completed her Ph.D. at the University of Pennsylvania in 2009, and subsequently spent a year as a Computing Innovation Fellow at Harvard. She is the recipient of Penn's 2009 Rubinoff dissertation award for innovative applications of computer technology, a National Science Foundation CAREER award, a Presidential Early Career Award for Scientists and Engineers (PECASE), and a handful of best paper awards. In her "spare" time, Jenn is involved in a variety of efforts to provide support for women in computer science; most notably, she co-founded the Annual Workshop for Women in Machine Learning, which has been held each year since 2006.
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2021 : GAM Changer: Editing Generalized Additive Models with Interactive Visualization »
Zijie Jay Wang · Harsha Nori · Duen Horng Chau · Jennifer Wortman Vaughan · Rich Caruana -
2022 : Generation Probabilities are Not Enough: Improving Error Highlighting for AI Code Suggestions »
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2022 : Beyond Decision Recommendations: Stop Putting Machine Learning First and Design Human-Centered AI for Decision Support »
Zana Bucinca · Alexandra Chouldechova · Jennifer Wortman Vaughan · Krzysztof Z Gajos -
2022 : Differentially Private Gradient Boosting on Linear Learners for Tabular Data »
Saeyoung Rho · Shuai Tang · Sergul Aydore · Michael Kearns · Aaron Roth · Yu-Xiang Wang · Steven Wu · Cedric Archambeau -
2022 : Panel »
Meena Jagadeesan · Avrim Blum · Jon Kleinberg · Celestine Mendler-Dünner · Jennifer Wortman Vaughan · Chara Podimata -
2022 Poster: Finite Sample Analysis Of Dynamic Regression Parameter Learning »
Mark Kozdoba · Edward Moroshko · Shie Mannor · Yacov Crammer -
2022 Poster: Private Synthetic Data for Multitask Learning and Marginal Queries »
Giuseppe Vietri · Cedric Archambeau · Sergul Aydore · William Brown · Michael Kearns · Aaron Roth · Ankit Siva · Shuai Tang · Steven Wu -
2021 : Fairness:: Assessing Fairness in Practice: AI Teams’ Processes, Challenges, and Needs for Support »
Michael Madaio · Hariharan Subramonyam · Jennifer Wortman Vaughan -
2020 : Q & A and Panel Session with Tom Mitchell, Jenn Wortman Vaughan, Sanjoy Dasgupta, and Finale Doshi-Velez »
Tom Mitchell · Jennifer Wortman Vaughan · Sanjoy Dasgupta · Finale Doshi-Velez · Zachary Lipton -
2020 : Invited Talk 7:Fair Portfolio Design »
Michael Kearns -
2020 : Keynote: Michael Kearns »
Michael Kearns -
2019 Poster: Average Individual Fairness: Algorithms, Generalization and Experiments »
Saeed Sharifi-Malvajerdi · Michael Kearns · Aaron Roth -
2019 Oral: Average Individual Fairness: Algorithms, Generalization and Experiments »
Saeed Sharifi-Malvajerdi · Michael Kearns · Aaron Roth -
2018 : Invited Talk 3: Fairness in Allocation Problems »
Michael Kearns -
2018 Poster: Efficient Loss-Based Decoding on Graphs for Extreme Classification »
Itay Evron · Edward Moroshko · Yacov Crammer -
2018 Poster: Online Learning with an Unknown Fairness Metric »
Stephen Gillen · Christopher Jung · Michael Kearns · Aaron Roth -
2017 : The Unfair Externalities of Exploration »
Aleksandrs Slivkins · Jennifer Wortman Vaughan -
2017 : Poster spotlights »
Hiroshi Kuwajima · Masayuki Tanaka · Qingkai Liang · Matthieu Komorowski · Fanyu Que · Thalita F Drumond · Aniruddh Raghu · Leo Anthony Celi · Christina Göpfert · Andrew Ross · Sarah Tan · Rich Caruana · Yin Lou · Devinder Kumar · Graham Taylor · Forough Poursabzi-Sangdeh · Jennifer Wortman Vaughan · Hanna Wallach -
2017 Workshop: Learning in the Presence of Strategic Behavior »
Nika Haghtalab · Yishay Mansour · Tim Roughgarden · Vasilis Syrgkanis · Jennifer Wortman Vaughan -
2017 Poster: Rotting Bandits »
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2017 Poster: A Decomposition of Forecast Error in Prediction Markets »
Miro Dudik · Sebastien Lahaie · Ryan Rogers · Jennifer Wortman Vaughan -
2016 : Jennifer Wortman Vaughan: "The Communication Network Within the Crowd" »
Jennifer Wortman Vaughan -
2016 Poster: Fairness in Learning: Classic and Contextual Bandits »
Matthew Joseph · Michael Kearns · Jamie Morgenstern · Aaron Roth -
2016 Tutorial: Crowdsourcing: Beyond Label Generation »
Jennifer Wortman Vaughan -
2015 Poster: Linear Multi-Resource Allocation with Semi-Bandit Feedback »
Tor Lattimore · Yacov Crammer · Csaba Szepesvari -
2014 Workshop: NIPS’14 Workshop on Crowdsourcing and Machine Learning »
David Parkes · Denny Zhou · Chien-Ju Ho · Nihar Bhadresh Shah · Adish Singla · Jared Heyman · Edwin Simpson · Andreas Krause · Rafael Frongillo · Jennifer Wortman Vaughan · Panagiotis Papadimitriou · Damien Peters -
2014 Workshop: NIPS Workshop on Transactional Machine Learning and E-Commerce »
David Parkes · David H Wolpert · Jennifer Wortman Vaughan · Jacob D Abernethy · Amos Storkey · Mark Reid · Ping Jin · Nihar Bhadresh Shah · Mehryar Mohri · Luis E Ortiz · Robin Hanson · Aaron Roth · Satyen Kale · Sebastien Lahaie -
2014 Poster: Learning Multiple Tasks in Parallel with a Shared Annotator »
Haim Cohen · Yacov Crammer -
2014 Session: Oral Session 9 »
Jennifer Wortman Vaughan -
2014 Invited Talk: Games, Networks, and People »
Michael Kearns -
2013 Workshop: Resource-Efficient Machine Learning »
Yevgeny Seldin · Yasin Abbasi Yadkori · Yacov Crammer · Ralf Herbrich · Peter Bartlett -
2013 Workshop: Crowdsourcing: Theory, Algorithms and Applications »
Jennifer Wortman Vaughan · Greg Stoddard · Chien-Ju Ho · Adish Singla · Michael Bernstein · Devavrat Shah · Arpita Ghosh · Evgeniy Gabrilovich · Denny Zhou · Nikhil Devanur · Xi Chen · Alexander Ihler · Qiang Liu · Genevieve Patterson · Ashwinkumar Badanidiyuru Varadaraja · Hossein Azari Soufiani · Jacob Whitehill -
2013 Poster: Marginals-to-Models Reducibility »
Tim Roughgarden · Michael Kearns -
2012 Workshop: Multi-Trade-offs in Machine Learning »
Yevgeny Seldin · Guy Lever · John Shawe-Taylor · Nicolò Cesa-Bianchi · Yacov Crammer · Francois Laviolette · Gabor Lugosi · Peter Bartlett -
2012 Poster: Volume Regularization for Binary Classification »
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2012 Spotlight: Volume Regularization for Binary Classification »
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2012 Poster: Learning Multiple Tasks using Shared Hypotheses »
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2011 Workshop: 2nd Workshop on Computational Social Science and the Wisdom of Crowds »
Winter Mason · Jennifer Wortman Vaughan · Hanna Wallach -
2011 Workshop: New Frontiers in Model Order Selection »
Yevgeny Seldin · Yacov Crammer · Nicolò Cesa-Bianchi · Francois Laviolette · John Shawe-Taylor -
2011 Workshop: Relations between machine learning problems - an approach to unify the field »
Robert Williamson · John Langford · Ulrike von Luxburg · Mark Reid · Jennifer Wortman Vaughan -
2010 Workshop: Computational Social Science and the Wisdom of Crowds »
Jennifer Wortman Vaughan · Hanna Wallach -
2010 Poster: Learning via Gaussian Herding »
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2010 Poster: New Adaptive Algorithms for Online Classification »
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2009 Workshop: Advances in Ranking »
Shivani Agarwal · Chris J Burges · Yacov Crammer -
2009 Poster: Adaptive Regularization of Weight Vectors »
Yacov Crammer · Alex Kulesza · Mark Dredze -
2009 Spotlight: Adaptive Regularization of Weight Vectors »
Yacov Crammer · Alex Kulesza · Mark Dredze -
2008 Session: Oral session 6: Neural Coding »
Yacov Crammer -
2008 Poster: Exact Convex Confidence-Weighted Learning »
Yacov Crammer · Mark Dredze · Fernando Pereira -
2008 Spotlight: Exact Convex Confidence-Weighted Learning »
Yacov Crammer · Mark Dredze · Fernando Pereira -
2007 Spotlight: Privacy-Preserving Belief Propagation and Sampling »
Michael Kearns · Jinsong Tan · Jennifer Wortman Vaughan -
2007 Poster: Privacy-Preserving Belief Propagation and Sampling »
Michael Kearns · Jinsong Tan · Jennifer Wortman Vaughan -
2007 Poster: Learning Bounds for Domain Adaptation »
John Blitzer · Yacov Crammer · Alex Kulesza · Fernando Pereira · Jennifer Wortman Vaughan -
2006 Poster: Analysis of Representations for Domain Adaptation »
John Blitzer · Shai Ben-David · Yacov Crammer · Fernando Pereira -
2006 Poster: A Small World Threshold for Economic Network Formation »
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