Generalizing from several related classification tasks to a new unlabeled sample G Blanchard, G Lee, C Scott Advances in neural information processing systems 24, 2011 | 538 | 2011 |
Robust kernel density estimation JS Kim, CD Scott The Journal of Machine Learning Research 13 (1), 2529-2565, 2012 | 488 | 2012 |
Semi-supervised novelty detection G Blanchard, G Lee, C Scott The Journal of Machine Learning Research 11, 2973-3009, 2010 | 335 | 2010 |
Domain generalization by marginal transfer learning G Blanchard, AA Deshmukh, U Dogan, G Lee, C Scott Journal of machine learning research 22 (2), 1-55, 2021 | 303 | 2021 |
Classification with asymmetric label noise: Consistency and maximal denoising C Scott, G Blanchard, G Handy Conference on learning theory, 489-511, 2013 | 250 | 2013 |
Mixture proportion estimation via kernel embeddings of distributions H Ramaswamy, C Scott, A Tewari International conference on machine learning, 2052-2060, 2016 | 232 | 2016 |
A Neyman-Pearson approach to statistical learning C Scott, R Nowak IEEE Transactions on Information Theory 51 (11), 3806-3819, 2005 | 212 | 2005 |
A rate of convergence for mixture proportion estimation, with application to learning from noisy labels C Scott Artificial Intelligence and Statistics, 838-846, 2015 | 193 | 2015 |
Learning minimum volume sets C Scott, R Nowak Advances in neural information processing systems 18, 2005 | 187 | 2005 |
EM algorithms for multivariate Gaussian mixture models with truncated and censored data G Lee, C Scott Computational Statistics & Data Analysis 56 (9), 2816-2829, 2012 | 178 | 2012 |
Minimax-optimal classification with dyadic decision trees C Scott, RD Nowak IEEE transactions on information theory 52 (4), 1335-1353, 2006 | 156 | 2006 |
Mean values of Dedekind sums JB Conrey, E Fransen, R Klein, C Scott arXiv preprint math/9410212, 1994 | 139 | 1994 |
Robust contour matching via the order-preserving assignment problem C Scott, R Nowak IEEE Transactions on Image Processing 15 (7), 1831-1838, 2006 | 119 | 2006 |
Performance measures for Neyman–Pearson classification C Scott IEEE Transactions on Information Theory 53 (8), 2852-2863, 2007 | 109 | 2007 |
Calibrated asymmetric surrogate losses C Scott | 108 | 2012 |
Multi-task learning for contextual bandits AA Deshmukh, U Dogan, C Scott Advances in neural information processing systems 30, 2017 | 103 | 2017 |
Adaptive hausdorff estimation of density level sets A Singh, C Scott, R Nowak | 97 | 2009 |
Distributed spatial anomaly detection P Chhabra, C Scott, ED Kolaczyk, M Crovella IEEE INFOCOM 2008-The 27th Conference on Computer Communications, 1705-1713, 2008 | 92 | 2008 |
Novelty detection: Unlabeled data definitely help C Scott, G Blanchard Artificial intelligence and statistics, 464-471, 2009 | 90 | 2009 |
Tuning support vector machines for minimax and Neyman-Pearson classification MA Davenport, RG Baraniuk, CD Scott IEEE transactions on pattern analysis and machine intelligence 32 (10), 1888 …, 2010 | 87 | 2010 |