Timezone: »
Author Information
Christina Lee (Microsoft Research)
Asuman Ozdaglar (Massachusetts Institute of Technology)
Asu Ozdaglar received the B.S. degree in electrical engineering from the Middle East Technical University, Ankara, Turkey, in 1996, and the S.M. and the Ph.D. degrees in electrical engineering and computer science from the Massachusetts Institute of Technology, Cambridge, in 1998 and 2003, respectively. She is currently a professor in the Electrical Engineering and Computer Science Department at the Massachusetts Institute of Technology. She is also the director of the Laboratory for Information and Decision Systems. Her research expertise includes optimization theory, with emphasis on nonlinear programming and convex analysis, game theory, with applications in communication, social, and economic networks, distributed optimization and control, and network analysis with special emphasis on contagious processes, systemic risk and dynamic control. Professor Ozdaglar is the recipient of a Microsoft fellowship, the MIT Graduate Student Council Teaching award, the NSF Career award, the 2008 Donald P. Eckman award of the American Automatic Control Council, the Class of 1943 Career Development Chair, the inaugural Steven and Renee Innovation Fellowship, and the 2014 Spira teaching award. She served on the Board of Governors of the Control System Society in 2010 and was an associate editor for IEEE Transactions on Automatic Control. She is currently the area coeditor for a new area for the journal Operations Research, entitled "Games, Information and Networks. She is the coauthor of the book entitled âConvex Analysis and Optimizationâ (Athena Scientific, 2003).
Devavrat Shah (Massachusetts Institute of Technology)
Devavrat Shah is a professor of Electrical Engineering & Computer Science and Director of Statistics and Data Science at MIT. He received PhD in Computer Science from Stanford. He received Erlang Prize from Applied Probability Society of INFORMS in 2010 and NeuIPS best paper award in 2008.
More from the Same Authors

2021 Spotlight: Regulating algorithmic filtering on social media »
Sarah Cen · Devavrat Shah 
2021 : Regret, stability, and fairness in matching markets with bandit learners »
Sarah Cen · Devavrat Shah 
2021 : Regret, stability, and fairness in matching markets with bandit learners »
Sarah Cen · Devavrat Shah 
2021 : Q&A with Professor Asu Ozdaglar »
Asuman Ozdaglar 
2021 : Keynote Talk: Personalization in Federated Learning: Adaptation and Clustering (Asu Ozdaglar) »
Asuman Ozdaglar 
2021 Poster: A Computationally Efficient Method for Learning Exponential Family Distributions »
Abhin Shah · Devavrat Shah · Gregory Wornell 
2021 Poster: Regulating algorithmic filtering on social media »
Sarah Cen · Devavrat Shah 
2021 Poster: Decentralized Qlearning in Zerosum Markov Games »
Muhammed Sayin · Kaiqing Zhang · David Leslie · Tamer Basar · Asuman Ozdaglar 
2021 Poster: Change Point Detection via Multivariate Singular Spectrum Analysis »
Arwa Alanqary · Abdullah Alomar · Devavrat Shah 
2021 Poster: Generalization of ModelAgnostic MetaLearning Algorithms: Recurring and Unseen Tasks »
Alireza Fallah · Aryan Mokhtari · Asuman Ozdaglar 
2021 Poster: On the Convergence Theory of Debiased ModelAgnostic MetaReinforcement Learning »
Alireza Fallah · Kristian Georgiev · Aryan Mokhtari · Asuman Ozdaglar 
2021 Poster: PerSim: DataEfficient Offline Reinforcement Learning with Heterogeneous Agents via Personalized Simulators »
Anish Agarwal · Abdullah Alomar · Varkey Alumootil · Devavrat Shah · Dennis Shen · Zhi Xu · Cindy Yang 
2020 Poster: Estimation of Skill Distribution from a Tournament »
Ali Jadbabaie · Anuran Makur · Devavrat Shah 
2020 Spotlight: Estimation of Skill Distribution from a Tournament »
Ali Jadbabaie · Anuran Makur · Devavrat Shah 
2020 Poster: Personalized Federated Learning with Theoretical Guarantees: A ModelAgnostic MetaLearning Approach »
Alireza Fallah · Aryan Mokhtari · Asuman Ozdaglar 
2020 Poster: Sample Efficient Reinforcement Learning via LowRank Matrix Estimation »
Devavrat Shah · Dogyoon Song · Zhi Xu · Yuzhe Yang 
2020 Demonstration: tspDB: Time Series Predict DB »
Anish Agarwal · Abdullah Alomar · Devavrat Shah 
2019 Poster: On Robustness of Principal Component Regression »
Anish Agarwal · Devavrat Shah · Dennis Shen · Dogyoon Song 
2019 Oral: On Robustness of Principal Component Regression »
Anish Agarwal · Devavrat Shah · Dennis Shen · Dogyoon Song 
2019 Poster: A Universally Optimal Multistage Accelerated Stochastic Gradient Method »
Necdet Serhat Aybat · Alireza Fallah · Mert Gurbuzbalaban · Asuman Ozdaglar 
2019 Tutorial: Synthetic Control »
Alberto Abadie · Vishal Misra · Devavrat Shah 
2018 Poster: Qlearning with Nearest Neighbors »
Devavrat Shah · Qiaomin Xie 
2018 Poster: Escaping Saddle Points in Constrained Optimization »
Aryan Mokhtari · Asuman Ozdaglar · Ali Jadbabaie 
2018 Spotlight: Escaping Saddle Points in Constrained Optimization »
Aryan Mokhtari · Asuman Ozdaglar · Ali Jadbabaie 
2017 : Iterative Collaborative Filtering for Sparse Matrix Estimation »
Christina Lee 
2017 Workshop: Nearest Neighbors for Modern Applications with Massive Data: An Ageold Solution with New Challenges »
George H Chen · Devavrat Shah · Christina Lee 
2017 Poster: Thy Friend is My Friend: Iterative Collaborative Filtering for Sparse Matrix Estimation »
Christian Borgs · Jennifer Chayes · Christina Lee · Devavrat Shah 
2017 Poster: When Cyclic Coordinate Descent Outperforms Randomized Coordinate Descent »
Mert Gurbuzbalaban · Asuman Ozdaglar · Pablo A Parrilo · Nuri Vanli 
2017 Spotlight: When Cyclic Coordinate Descent Outperforms Randomized Coordinate Descent »
Mert Gurbuzbalaban · Asuman Ozdaglar · Pablo A Parrilo · Nuri Vanli 
2016 Poster: Blind Regression: Nonparametric Regression for Latent Variable Models via Collaborative Filtering »
Dogyoon Song · Christina Lee · Yihua Li · Devavrat Shah 
2015 Invited Talk: Incremental Methods for Additive Cost Convex Optimization »
Asuman Ozdaglar 
2014 Workshop: Analysis of Rank Data: Confluence of Social Choice, Operations Research, and Machine Learning »
Shivani Agarwal · Hossein Azari Soufiani · Guy Bresler · Sewoong Oh · David Parkes · Arun Rajkumar · Devavrat Shah 
2014 Poster: Hardness of parameter estimation in graphical models »
Guy Bresler · David Gamarnik · Devavrat Shah 
2014 Poster: A Latent Source Model for Online Collaborative Filtering »
Guy Bresler · George H Chen · Devavrat Shah 
2014 Spotlight: A Latent Source Model for Online Collaborative Filtering »
Guy Bresler · George H Chen · Devavrat Shah 
2014 Poster: Learning Mixed Multinomial Logit Model from Ordinal Data »
Sewoong Oh · Devavrat Shah 
2014 Poster: Structure learning of antiferromagnetic Ising models »
Guy Bresler · David Gamarnik · Devavrat Shah 
2013 Workshop: Crowdsourcing: Theory, Algorithms and Applications »
Jennifer Wortman Vaughan · Greg Stoddard · ChienJu 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: A Latent Source Model for Nonparametric Time Series Classification »
George H Chen · Stanislav Nikolov · Devavrat Shah 
2012 Poster: Iterative ranking from pairwise comparisons »
Sahand N Negahban · Sewoong Oh · Devavrat Shah 
2012 Spotlight: Iterative ranking from pairwise comparisons »
Sahand N Negahban · Sewoong Oh · Devavrat Shah 
2011 Poster: Iterative Learning for Reliable Crowdsourcing Systems »
David R Karger · Sewoong Oh · Devavrat Shah 
2011 Oral: Iterative Learning for Reliable Crowdsourcing Systems »
David R Karger · Sewoong Oh · Devavrat Shah 
2009 Poster: A DataDriven Approach to Modeling Choice »
Vivek Farias · Srikanth Jagabathula · Devavrat Shah 
2009 Spotlight: A DataDriven Approach to Modeling Choice »
Vivek Farias · Srikanth Jagabathula · Devavrat Shah 
2009 Poster: Local Rules for Global MAP: When Do They Work ? »
Kyomin Jung · Pushmeet Kohli · Devavrat Shah 
2008 Poster: Inferring rankings under constrained sensing »
Srikanth Jagabathula · Devavrat Shah 
2008 Oral: Inferring rankings under constrained sensing »
Srikanth Jagabathula · Devavrat Shah 
2007 Spotlight: Message Passing for Maxweight Independent Set »
Sujay Sanghavi · Devavrat Shah · Alan S Willsky 
2007 Poster: Message Passing for Maxweight Independent Set »
Sujay Sanghavi · Devavrat Shah · Alan S Willsky 
2007 Poster: Local Algorithms for Approximate Inference in MinorExcluded Graphs »
Kyomin Jung · Devavrat Shah