On convergence and stability of gans N Kodali, J Abernethy, J Hays, Z Kira arXiv preprint arXiv:1705.07215, 2017 | 779* | 2017 |
Competing in the Dark: An Efficient Algorithm for Bandit Linear Optimization. JD Abernethy, E Hazan, A Rakhlin COLT, 263-274, 2008 | 403 | 2008 |
A new approach to collaborative filtering: Operator estimation with spectral regularization. J Abernethy, F Bach, T Evgeniou, JP Vert Journal of Machine Learning Research 10 (3), 2009 | 308 | 2009 |
Dynamic online pricing with incomplete information using multiarmed bandit experiments K Misra, EM Schwartz, J Abernethy Marketing Science 38 (2), 226-252, 2019 | 197 | 2019 |
Optimal strategies and minimax lower bounds for online convex games J Abernethy, PL Bartlett, A Rakhlin, A Tewari Proceedings of the 21st annual conference on learning theory, 414-424, 2008 | 194 | 2008 |
Blackwell approachability and no-regret learning are equivalent J Abernethy, PL Bartlett, E Hazan Proceedings of the 24th Annual Conference on Learning Theory, 27-46, 2011 | 125 | 2011 |
Low-rank matrix factorization with attributes J Abernethy, F Bach, T Evgeniou, JP Vert arXiv preprint cs/0611124, 2006 | 108 | 2006 |
Web spam identification through content and hyperlinks J Abernethy, O Chapelle, C Castillo Proceedings of the 4th international workshop on Adversarial information …, 2008 | 107 | 2008 |
Efficient market making via convex optimization, and a connection to online learning J Abernethy, Y Chen, JW Vaughan ACM Transactions on Economics and Computation (TEAC) 1 (2), 1-39, 2013 | 106 | 2013 |
A stochastic view of optimal regret through minimax duality J Abernethy, A Agarwal, PL Bartlett, A Rakhlin arXiv preprint arXiv:0903.5328, 2009 | 105 | 2009 |
Graph regularization methods for web spam detection J Abernethy, O Chapelle, C Castillo Machine Learning 81, 207-225, 2010 | 86 | 2010 |
Online linear optimization via smoothing J Abernethy, C Lee, A Sinha, A Tewari Conference on learning theory, 807-823, 2014 | 80 | 2014 |
Fighting bandits with a new kind of smoothness JD Abernethy, C Lee, A Tewari Advances in Neural Information Processing Systems 28, 2015 | 79 | 2015 |
A collaborative mechanism for crowdsourcing prediction problems JD Abernethy, R Frongillo Advances in neural information processing systems 24, 2011 | 77 | 2011 |
Eliciting consumer preferences using robust adaptive choice questionnaires J Abernethy, T Evgeniou, O Toubia, JP Vert IEEE Transactions on Knowledge and Data Engineering 20 (2), 145-155, 2007 | 75 | 2007 |
Interior-point methods for full-information and bandit online learning JD Abernethy, E Hazan, A Rakhlin IEEE Transactions on Information Theory 58 (7), 4164-4175, 2012 | 73 | 2012 |
Beating the adaptive bandit with high probability J Abernethy, A Rakhlin 2009 Information Theory and Applications Workshop, 280-289, 2009 | 71 | 2009 |
A characterization of scoring rules for linear properties JD Abernethy, RM Frongillo Conference on Learning Theory, 27.1-27.13, 2012 | 67 | 2012 |
Multitask learning with expert advice J Abernethy, P Bartlett, A Rakhlin Learning Theory: 20th Annual Conference on Learning Theory, COLT 2007, San …, 2007 | 64 | 2007 |
An optimization-based framework for automated market-making J Abernethy, Y Chen, J Wortman Vaughan Proceedings of the 12th ACM conference on Electronic commerce, 297-306, 2011 | 62 | 2011 |