Learning efficiently with approximate inference via dual losses O Meshi, D Sontag, T Jaakkola, A Globerson International Machine Learning Society, 2010 | 89 | 2010 |
An alternating direction method for dual MAP LP relaxation O Meshi, A Globerson Machine Learning and Knowledge Discovery in Databases: European Conference …, 2011 | 88 | 2011 |
Seq2Slate: Re-ranking and slate optimization with RNNs I Bello, S Kulkarni, S Jain, C Boutilier, E Chi, E Eban, X Luo, A Mackey, ... arXiv preprint arXiv:1810.02019, 2018 | 87 | 2018 |
Convexifying the Bethe free energy O Meshi, A Jaimovich, A Globerson, N Friedman arXiv preprint arXiv:1205.2624, 2012 | 63 | 2012 |
Linear-memory and decomposition-invariant linearly convergent conditional gradient algorithm for structured polytopes D Garber, O Meshi Advances in neural information processing systems 29, 2016 | 58 | 2016 |
Template based inference in symmetric relational Markov random fields A Jaimovich, O Meshi, N Friedman arXiv preprint arXiv:1206.5276, 2012 | 55 | 2012 |
Smooth and strong: Map inference with linear convergence O Meshi, M Mahdavi, A Schwing Advances in Neural Information Processing Systems 28, 2015 | 40 | 2015 |
Convergence rate analysis of MAP coordinate minimization algorithms O Meshi, A Globerson, T Jaakkola Advances in Neural Information Processing Systems 25, 2012 | 38 | 2012 |
More data means less inference: A pseudo-max approach to structured learning D Sontag, O Meshi, T Jaakkola, A Globerson Neural Information Processing Systems Foundation, 2010 | 30 | 2010 |
Planning and learning with stochastic action sets C Boutilier, A Cohen, A Daniely, A Hassidim, Y Mansour, O Meshi, ... arXiv preprint arXiv:1805.02363, 2018 | 29 | 2018 |
Learning structured models with the AUC loss and its generalizations N Rosenfeld, O Meshi, D Tarlow, A Globerson Artificial Intelligence and Statistics, 841-849, 2014 | 28 | 2014 |
Deep structured prediction with nonlinear output transformations C Graber, O Meshi, A Schwing Advances in Neural Information Processing Systems 31, 2018 | 27 | 2018 |
Train and Test Tightness of LP Relaxations in Structured Prediction O Meshi, M Mahdavi, A Weller, D Sontag International Conference on Machine Learning (ICML), 2016 | 23* | 2016 |
Evolutionary conservation and over-representation of functionally enriched network patterns in the yeast regulatory network O Meshi, T Shlomi, E Ruppin BMC systems biology 1, 1-7, 2007 | 20 | 2007 |
FastInf: An efficient approximate inference library A Jaimovich, O Meshi, I McGraw, G Elidan The Journal of Machine Learning Research 11, 1733-1736, 2010 | 17 | 2010 |
Empirical Bayes regret minimization CW Hsu, B Kveton, O Meshi, M Mladenov, C Szepesvari arXiv preprint arXiv:1904.02664, 2019 | 16 | 2019 |
Efficient training of structured svms via soft constraints O Meshi, N Srebro, T Hazan Artificial Intelligence and Statistics, 699-707, 2015 | 14 | 2015 |
On the value of prior in online learning to rank B Kveton, O Meshi, M Zoghi, Z Qin International Conference on Artificial Intelligence and Statistics, 6880-6892, 2022 | 12 | 2022 |
Asynchronous parallel coordinate minimization for map inference O Meshi, A Schwing Advances in Neural Information Processing Systems 30, 2017 | 10 | 2017 |
Approximate linear programming for logistic Markov decision processes M Mladenov, C Boutilier, D Schuurmans, G Elidan, O Meshi, T Lu Proceedings of the Twenty-sixth International Joint Conference on Artificial …, 2017 | 9 | 2017 |