Novel methods improve prediction of species’ distributions from occurrence data J Elith*, C H. Graham*, R P. Anderson, M Dudík, S Ferrier, A Guisan, ... Ecography 29 (2), 129-151, 2006 | 8673 | 2006 |
Modeling of species distributions with Maxent: new extensions and a comprehensive evaluation SJ Phillips, M Dudík Ecography 31 (2), 161-175, 2008 | 6342 | 2008 |
A statistical explanation of MaxEnt for ecologists J Elith, SJ Phillips, T Hastie, M Dudík, YE Chee, CJ Yates Diversity and distributions 17 (1), 43-57, 2011 | 5748 | 2011 |
A maximum entropy approach to species distribution modeling SJ Phillips, M Dudík, RE Schapire Proceedings of the twenty-first international conference on Machine learning, 83, 2004 | 2709 | 2004 |
Sample selection bias and presence‐only distribution models: implications for background and pseudo‐absence data SJ Phillips, M Dudík, J Elith, CH Graham, A Lehmann, J Leathwick, ... Ecological applications 19 (1), 181-197, 2009 | 2465 | 2009 |
Opening the black box: An open‐source release of Maxent SJ Phillips, RP Anderson, M Dudík, RE Schapire, ME Blair Ecography 40 (7), 887-893, 2017 | 1294 | 2017 |
A reductions approach to fair classification A Agarwal, A Beygelzimer, M Dudík, J Langford, H Wallach ICML 2018, 2018 | 643 | 2018 |
Maxent software for modeling species niches and distributions v. 3.4.1 SJ Phillips, M Dudík, RE Schapire URL: https://biodiversityinformatics.amnh.org/open_source/maxent, 2017 | 595* | 2017 |
Doubly robust policy evaluation and learning M Dudik, J Langford, L Li ICML 2011, 2011 | 522 | 2011 |
Improving fairness in machine learning systems: What do industry practitioners need? K Holstein, J Wortman Vaughan, H Daumé III, M Dudik, H Wallach Proceedings of the 2019 CHI conference on human factors in computing systems …, 2019 | 432 | 2019 |
A reliable effective terascale linear learning system A Agarwal, O Chapelle, M Dudik, J Langford Journal of Machine Learning Research 15, 2014 | 413 | 2014 |
Performance guarantees for regularized maximum entropy density estimation M Dudik, SJ Phillips, RE Schapire International Conference on Computational Learning Theory, 472-486, 2004 | 287 | 2004 |
Efficient Optimal Learning for Contextual Bandits M Dudik, D Hsu, S Kale, N Karampatziakis, J Langford, L Reyzin, T Zhang UAI 2011, 2011 | 276 | 2011 |
Correcting sample selection bias in maximum entropy density estimation M Dudık, RE Schapire, SJ Phillips Advances in neural information processing systems 17, 323-330, 2005 | 260 | 2005 |
Maximum entropy density estimation with generalized regularization and an application to species distribution modeling M Dudík, SJ Phillips, RE Schapire Journal of Machine Learning Research 8, 1217-1260, 2007 | 247 | 2007 |
Doubly robust policy evaluation and optimization M Dudík, D Erhan, J Langford, L Li Statistical Science 29 (4), 485-511, 2014 | 180 | 2014 |
Maxent software for species distribution modeling SJ Phillips, M Dudík, RE Schapire URL: https://www.cs.princeton.edu/schapire/maxent, 2005 | 139* | 2005 |
Hierarchical imitation and reinforcement learning HM Le, N Jiang, A Agarwal, M Dudík, Y Yue, H Daumé III ICML 2018, 2018 | 137 | 2018 |
Optimal and adaptive off-policy evaluation in contextual bandits YX Wang, A Agarwal, M Dudík International Conference on Machine Learning, 3589-3597, 2017 | 135 | 2017 |
Off-policy evaluation for slate recommendation A Swaminathan, A Krishnamurthy, A Agarwal, M Dudik, J Langford, ... Advances in Neural Information Processing Systems 30, 2017 | 135 | 2017 |