Benchmarking classification models for software defect prediction: A proposed framework and novel findings S Lessmann, B Baesens, C Mues, S Pietsch IEEE transactions on software engineering 34 (4), 485-496, 2008 | 1513 | 2008 |
Benchmarking state-of-the-art classification algorithms for credit scoring B Baesens, T Van Gestel, S Viaene, M Stepanova, J Suykens, ... Journal of the operational research society 54, 627-635, 2003 | 1300 | 2003 |
Benchmarking state-of-the-art classification algorithms for credit scoring: An update of research S Lessmann, B Baesens, HV Seow, LC Thomas European Journal of Operational Research 247 (1), 124-136, 2015 | 1193 | 2015 |
Benchmarking least squares support vector machine classifiers T Van Gestel, JAK Suykens, B Baesens, S Viaene, J Vanthienen, ... Machine learning 54, 5-32, 2004 | 916 | 2004 |
Using neural network rule extraction and decision tables for credit-risk evaluation B Baesens, R Setiono, C Mues, J Vanthienen Management science 49 (3), 312-329, 2003 | 715 | 2003 |
Comprehensible credit scoring models using rule extraction from support vector machines D Martens, B Baesens, T Van Gestel, J Vanthienen European journal of operational research 183 (3), 1466-1476, 2007 | 597 | 2007 |
New insights into churn prediction in the telecommunication sector: A profit driven data mining approach W Verbeke, K Dejaeger, D Martens, J Hur, B Baesens European journal of operational research 218 (1), 211-229, 2012 | 565 | 2012 |
Classification with ant colony optimization D Martens, M De Backer, R Haesen, J Vanthienen, M Snoeck, B Baesens IEEE Transactions on evolutionary computation 11 (5), 651-665, 2007 | 564 | 2007 |
An empirical evaluation of the comprehensibility of decision table, tree and rule based predictive models J Huysmans, K Dejaeger, C Mues, J Vanthienen, B Baesens Decision Support Systems 51 (1), 141-154, 2011 | 530 | 2011 |
APATE: A novel approach for automated credit card transaction fraud detection using network-based extensions V Van Vlasselaer, C Bravo, O Caelen, T Eliassi-Rad, L Akoglu, M Snoeck, ... Decision support systems 75, 38-48, 2015 | 502 | 2015 |
Building comprehensible customer churn prediction models with advanced rule induction techniques W Verbeke, D Martens, C Mues, B Baesens Expert systems with applications 38 (3), 2354-2364, 2011 | 486 | 2011 |
Credit Risk Management: Basic concepts: Financial risk components, Rating analysis, models, economic and regulatory capital T Van Gestel, B Baesens Oxford University Press, 2009 | 420 | 2009 |
Analytics in a big data world: The essential guide to data science and its applications B Baesens John Wiley & Sons, 2014 | 375 | 2014 |
Transformational issues of big data and analytics in networked business B Baesens, R Bapna, JR Marsden, J Vanthienen, JL Zhao MIS quarterly 40 (4), 807-818, 2016 | 358 | 2016 |
Fraud analytics using descriptive, predictive, and social network techniques: a guide to data science for fraud detection B Baesens, V Van Vlasselaer, W Verbeke John Wiley & Sons, 2015 | 333 | 2015 |
Modeling churn using customer lifetime value N Glady, B Baesens, C Croux European journal of operational research 197 (1), 402-411, 2009 | 306 | 2009 |
Editorial survey: swarm intelligence for data mining D Martens, B Baesens, T Fawcett Machine Learning 82, 1-42, 2011 | 305 | 2011 |
A comparison of state‐of‐the‐art classification techniques for expert automobile insurance claim fraud detection S Viaene, RA Derrig, B Baesens, G Dedene Journal of Risk and Insurance 69 (3), 373-421, 2002 | 302 | 2002 |
Bayesian neural network learning for repeat purchase modelling in direct marketing B Baesens, S Viaene, D Van den Poel, J Vanthienen, G Dedene European Journal of Operational Research 138 (1), 191-211, 2002 | 295 | 2002 |
A multi-dimensional quality assessment of state-of-the-art process discovery algorithms using real-life event logs J De Weerdt, M De Backer, J Vanthienen, B Baesens Information systems 37 (7), 654-676, 2012 | 290 | 2012 |