The relationship between Precision-Recall and ROC curves J Davis, M Goadrich Proceedings of the 23rd international conference on Machine learning, 233-240, 2006 | 7659 | 2006 |
Learning from positive and unlabeled data: A survey J Bekker, J Davis Machine Learning 109 (4), 719-760, 2020 | 607 | 2020 |
Learning first-order horn clauses from web text S Schoenmackers, J Davis, O Etzioni, DS Weld Proceedings of the 2010 conference on empirical methods in natural language …, 2010 | 290 | 2010 |
Deep transfer via second-order markov logic J Davis, P Domingos Proceedings of the 26th annual international conference on machine learning …, 2009 | 287 | 2009 |
Actions speak louder than goals: Valuing player actions in soccer T Decroos, L Bransen, J Van Haaren, J Davis Proceedings of the 25th ACM SIGKDD international conference on knowledge …, 2019 | 283 | 2019 |
Lifted probabilistic inference by first-order knowledge compilation G Van den Broeck, N Taghipour, W Meert, J Davis, L De Raedt IJCAI, 2178-2185, 2011 | 233 | 2011 |
Estimating the class prior in positive and unlabeled data through decision tree induction J Bekker, J Davis Proceedings of the AAAI conference on artificial intelligence 32 (1), 2018 | 131 | 2018 |
Unachievable region in precision-recall space and its effect on empirical evaluation K Boyd, VS Costa, J Davis, CD Page Proceedings of the... International Conference on Machine Learning …, 2012 | 117 | 2012 |
Beyond the selected completely at random assumption for learning from positive and unlabeled data J Bekker, P Robberechts, J Davis Joint European conference on machine learning and knowledge discovery in …, 2019 | 105 | 2019 |
Learning Markov network structure with decision trees D Lowd, J Davis 2010 IEEE International Conference on Data Mining, 334-343, 2010 | 105 | 2010 |
Probabilistic Computer Model Developed from Clinical Data in National Mammography Database Format to Classify Mammographic Findings1 ES Burnside, J Davis, J Chhatwal, O Alagoz, MJ Lindstrom, BM Geller, ... Radiology 251 (3), 663-672, 2009 | 105 | 2009 |
Semi-Supervised Anomaly Detection with an Application to Water Analytics. V Vercruyssen, W Meert, G Verbruggen, K Maes, R Baumer, J Davis ICDM 2018, 527-536, 2018 | 101 | 2018 |
Markov network structure learning: A randomized feature generation approach J Van Haaren, J Davis Proceedings of the AAAI Conference on Artificial Intelligence 26 (1), 1148-1154, 2012 | 98 | 2012 |
Automatic discovery of tactics in spatio-temporal soccer match data T Decroos, J Van Haaren, J Davis Proceedings of the 24th acm sigkdd international conference on knowledge …, 2018 | 96 | 2018 |
Machine learning with a reject option: A survey K Hendrickx, L Perini, D Van der Plas, W Meert, J Davis Machine Learning 113 (5), 3073-3110, 2024 | 87 | 2024 |
View Learning for Statistical Relational Learning: With an Application to Mammography. J Davis, ES Burnside, I de Castro Dutra, D Page, R Ramakrishnan, ... IJCAI, 677-683, 2005 | 86 | 2005 |
An integrated approach to learning Bayesian networks of rules J Davis, E Burnside, I de Castro Dutra, D Page, VS Costa Machine Learning: ECML 2005: 16th European Conference on Machine Learning …, 2005 | 81 | 2005 |
Lifted variable elimination: Decoupling the operators from the constraint language N Taghipour, D Fierens, J Davis, H Blockeel Journal of Artificial Intelligence Research 47, 393-439, 2013 | 76 | 2013 |
Relationships between the external and internal training load in professional soccer: what can we learn from machine learning? A Jaspers, TO De Beéck, MS Brink, WGP Frencken, F Staes, JJ Davis, ... International journal of sports physiology and performance 13 (5), 625-630, 2018 | 74 | 2018 |
Bottom-Up Learning of Markov Network Structure J Davis, P Domingos 27th International Conference on Machine Learning, 271-278, 2010 | 73 | 2010 |