Elective surgery cancellations due to the COVID-19 pandemic: global predictive modelling to inform surgical recovery plans Journal of British Surgery 107 (11), 1440-1449, 2020 | 1512 | 2020 |
An empirical comparison of four initialization methods for the k-means algorithm JM Pena, JA Lozano, P Larranaga Pattern recognition letters 20 (10), 1027-1040, 1999 | 1211 | 1999 |
Optimization in continuous domains by learning and simulation of Gaussian networks P Larrañaga, R Etxeberria, JA Lozano, JM Peña | 294 | 2000 |
Towards scalable and data efficient learning of Markov boundaries JM Pena, R Nilsson, J Björkegren, J Tegnér International Journal of Approximate Reasoning 45 (2), 211-232, 2007 | 271 | 2007 |
Consistent feature selection for pattern recognition in polynomial time R Nilsson, JM Peña, J Björkegren, J Tegnér The Journal of Machine Learning Research 8, 589-612, 2007 | 230 | 2007 |
Combinatorial optimization by learning and simulation of Bayesian networks P Larranaga, R Etxeberria, JA Lozano, JM Pena arXiv preprint arXiv:1301.3871, 2013 | 178 | 2013 |
Growing Bayesian network models of gene networks from seed genes JM Pena, J Björkegren, J Tegnér Bioinformatics 21 (suppl_2), ii224-ii229, 2005 | 93 | 2005 |
Dimensionality reduction in unsupervised learning of conditional Gaussian networks JM Pena, JA Lozano, P Larranaga, I Inza IEEE Transactions on Pattern Analysis and Machine Intelligence 23 (6), 590-603, 2001 | 83 | 2001 |
An improved Bayesian structural EM algorithm for learning Bayesian networks for clustering JM Peña, JA Lozano, P Larrañaga Pattern Recognition Letters 21 (8), 779-786, 2000 | 79 | 2000 |
On local optima in learning Bayesian networks JD Nielsen, T Kocka, JM Pena arXiv preprint arXiv:1212.2500, 2012 | 73 | 2012 |
Learning recursive Bayesian multinets for data clustering by means of constructive induction JM Peña, JA Lozano, P Larrañaga Machine Learning 47, 63-89, 2002 | 72 | 2002 |
Unsupervised feature subset selection N Søndberg-Madsen, C Thomsen, JM Pena Aalborg University. Department of Computer Science, 2003 | 63 | 2003 |
Globally multimodal problem optimization via an estimation of distribution algorithm based on unsupervised learning of Bayesian networks JM Peña, JA Lozano, P Larrañaga Evolutionary Computation 13 (1), 43-66, 2005 | 56 | 2005 |
Learning dynamic Bayesian network models via cross-validation JM Pena, J Björkegren, J Tegnér Pattern Recognition Letters 26 (14), 2295-2308, 2005 | 53 | 2005 |
Learning gaussian graphical models of gene networks with false discovery rate control JM Pena European conference on evolutionary computation, machine learning and data …, 2008 | 52 | 2008 |
Scalable, efficient and correct learning of Markov boundaries under the faithfulness assumption JM Pena, J Björkegren, J Tegnér European Conference on Symbolic and Quantitative Approaches to Reasoning and …, 2005 | 45 | 2005 |
Detecting multivariate differentially expressed genes R Nilsson, JM Peña, J Björkegren, J Tegnér BMC bioinformatics 8, 1-10, 2007 | 41 | 2007 |
Unsupervised learning of Bayesian networks via estimation of distribution algorithms: an application to gene expression data clustering JM Pena, JA Lozano, P Larranaga International Journal of Uncertainty, Fuzziness and Knowledge-Based Systems …, 2004 | 40 | 2004 |
Evaluating feature selection for SVMs in high dimensions R Nilsson, JM Pena, J Björkegren, J Tegnér Machine Learning: ECML 2006: 17th European Conference on Machine Learning …, 2006 | 39 | 2006 |
Finding consensus Bayesian network structures JM Pena Journal of Artificial Intelligence Research 42, 661-687, 2011 | 34 | 2011 |