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Author Information
Han Liu (Carnegie Mellon University)
Xi Chen (NYU)
Xi Chen is an associate professor with tenure at Stern School of Business at New York University, who is also an affiliated professor to Computer Science and Center for Data Science. Before that, he was a Postdoc in the group of Prof. Michael Jordan at UC Berkeley. He obtained his Ph.D. from the Machine Learning Department at Carnegie Mellon University (CMU). He studies high-dimensional statistical learning, online learning, large-scale stochastic optimization, and applications to operations. He has published more than 20 journal articles in statistics, machine learning, and operations, and 30 top machine learning peer-reviewed conference proceedings. He received NSF Career Award, ICSA Outstanding Young Researcher Award, Faculty Research Awards from Google, Adobe, Alibaba, and Bloomberg, and was featured in Forbes list of “30 Under30 in Science”.
John Lafferty (Yale University)
Larry Wasserman (Carnegie Mellon University)
Related Events (a corresponding poster, oral, or spotlight)
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2010 Spotlight: Graph-Valued Regression »
Wed. Dec 8th 07:15 -- 07:20 PM Room Regency Ballroom
More from the Same Authors
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2020 Poster: PLLay: Efficient Topological Layer based on Persistent Landscapes »
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2018 Poster: Near-Optimal Policies for Dynamic Multinomial Logit Assortment Selection Models »
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2016 Workshop: Adaptive and Scalable Nonparametric Methods in Machine Learning »
Aaditya Ramdas · Arthur Gretton · Bharath Sriperumbudur · Han Liu · John Lafferty · Samory Kpotufe · Zoltán Szabó -
2016 Poster: Local Minimax Complexity of Stochastic Convex Optimization »
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2016 Poster: On the Recursive Teaching Dimension of VC Classes »
Peter Chen · Xi Chen · Yu Cheng · Bo Tang -
2016 Poster: Selective inference for group-sparse linear models »
Fan Yang · Rina Barber · Prateek Jain · John Lafferty -
2016 Poster: Statistical Inference for Cluster Trees »
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2016 Poster: InfoGAN: Interpretable Representation Learning by Information Maximizing Generative Adversarial Nets »
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2016 Poster: VIME: Variational Information Maximizing Exploration »
Rein Houthooft · Xi Chen · Peter Chen · Yan Duan · John Schulman · Filip De Turck · Pieter Abbeel -
2016 Poster: Improving Variational Autoencoders with Inverse Autoregressive Flow »
Diederik Kingma · Tim Salimans · Rafal Jozefowicz · Peter Chen · Xi Chen · Ilya Sutskever · Max Welling -
2016 Poster: Improved Techniques for Training GANs »
Tim Salimans · Ian Goodfellow · Wojciech Zaremba · Vicki Cheung · Alec Radford · Peter Chen · Xi Chen -
2015 Poster: Optimal Ridge Detection using Coverage Risk »
Yen-Chi Chen · Christopher Genovese · Shirley Ho · Larry Wasserman -
2015 Poster: Nonparametric von Mises Estimators for Entropies, Divergences and Mutual Informations »
Kirthevasan Kandasamy · Akshay Krishnamurthy · Barnabas Poczos · Larry Wasserman · james m robins -
2015 Poster: A Convergent Gradient Descent Algorithm for Rank Minimization and Semidefinite Programming from Random Linear Measurements »
Qinqing Zheng · John Lafferty -
2014 Poster: Spectral Methods meet EM: A Provably Optimal Algorithm for Crowdsourcing »
Yuchen Zhang · Xi Chen · Denny Zhou · Michael Jordan -
2014 Spotlight: Spectral Methods meet EM: A Provably Optimal Algorithm for Crowdsourcing »
Yuchen Zhang · Xi Chen · Denny Zhou · Michael Jordan -
2014 Poster: Blossom Tree Graphical Models »
Zhe Liu · John Lafferty -
2014 Poster: Quantized Estimation of Gaussian Sequence Models in Euclidean Balls »
Yuancheng Zhu · John Lafferty -
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 Workshop: Modern Nonparametric Methods in Machine Learning »
Arthur Gretton · Mladen Kolar · Samory Kpotufe · John Lafferty · Han Liu · Bernhard Schölkopf · Alexander Smola · Rob Nowak · Mikhail Belkin · Lorenzo Rosasco · peter bickel · Yue Zhao -
2013 Poster: Variance Reduction for Stochastic Gradient Optimization »
Chong Wang · Xi Chen · Alexander Smola · Eric Xing -
2013 Poster: Cluster Trees on Manifolds »
Sivaraman Balakrishnan · Srivatsan Narayanan · Alessandro Rinaldo · Aarti Singh · Larry Wasserman -
2012 Workshop: Algebraic Topology and Machine Learning »
Sivaraman Balakrishnan · Alessandro Rinaldo · Donald Sheehy · Aarti Singh · Larry Wasserman -
2012 Workshop: Modern Nonparametric Methods in Machine Learning »
Sivaraman Balakrishnan · Arthur Gretton · Mladen Kolar · John Lafferty · Han Liu · Tong Zhang -
2012 Poster: Nonparametric Reduced Rank Regression »
Rina Foygel · Michael Horrell · Mathias Drton · John Lafferty -
2012 Poster: Optimal Regularized Dual Averaging Methods for Stochastic Optimization »
Xi Chen · Qihang Lin · Javier Pena -
2012 Poster: Clustering by Nonnegative Matrix Factorization Using Graph Random Walk »
Zhirong Yang · Tele Hao · Onur Dikmen · Xi Chen · Erkki Oja -
2012 Poster: Exponential Concentration for Mutual Information Estimation with Application to Forests »
Han Liu · John Lafferty · Larry Wasserman -
2011 Workshop: Philosophy and Machine Learning »
Marcello Pelillo · Joachim M Buhmann · Tiberio Caetano · Bernhard Schölkopf · Larry Wasserman -
2011 Workshop: Copulas in Machine Learning »
Gal Elidan · Zoubin Ghahramani · John Lafferty -
2010 Poster: Multivariate Dyadic Regression Trees for Sparse Learning Problems »
Han Liu · Xi Chen -
2010 Poster: Stability Approach to Regularization Selection (StARS) for High Dimensional Graphical Models »
Han Liu · Kathryn Roeder · Larry Wasserman -
2009 Poster: Nonparametric Greedy Algorithms for the Sparse Learning Problem »
Han Liu · Xi Chen -
2008 Poster: Nonparametric regression and classification with joint sparsity constraints »
Han Liu · John Lafferty · Larry Wasserman -
2008 Spotlight: Nonparametric regression and classification with joint sparsity constraints »
Han Liu · John Lafferty · Larry Wasserman -
2007 Poster: SpAM: Sparse Additive Models »
Pradeep Ravikumar · Han Liu · John Lafferty · Larry Wasserman -
2007 Spotlight: SpAM: Sparse Additive Models »
Pradeep Ravikumar · Han Liu · John Lafferty · Larry Wasserman -
2007 Spotlight: Statistical Analysis of Semi-Supervised Regression »
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2007 Poster: Statistical Analysis of Semi-Supervised Regression »
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2007 Poster: Compressed Regression »
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2006 Poster: Inferring Graphical Model Structure using $\ell_1$-Regularized Pseudo-Likelihood »
Martin J Wainwright · Pradeep Ravikumar · John Lafferty -
2006 Spotlight: Inferring Graphical Model Structure using $\ell_1$-Regularized Pseudo-Likelihood »
Martin J Wainwright · Pradeep Ravikumar · John Lafferty