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Stefan Lessmann
Stefan Lessmann
Professor of Information Systems, Humboldt-University of Berlin
Adresă de e-mail confirmată pe hu-berlin.de - Pagina de pornire
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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
15442008
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
12612015
Annals of Information Systems
U Apte, U Karmarkar, U Kulkarni, DJ Power, R Sharda, S Kozielski, ...
4342009
A comparative study of LSTM neural networks in forecasting day-ahead global horizontal irradiance with satellite data
S Srivastava, S Lessmann
Solar Energy 162, 232-247, 2018
3352018
The impact of preprocessing on data mining: An evaluation of classifier sensitivity in direct marketing
SF Crone, S Lessmann, R Stahlbock
European Journal of Operational Research 173 (3), 781-800, 2006
3262006
A comparative analysis of data preparation algorithms for customer churn prediction: A case study in the telecommunication industry
K Coussement, S Lessmann, G Verstraeten
Decision Support Systems 95, 27-36, 2017
2862017
Bridging the divide in financial market forecasting: machine learners vs. financial economists
MW Hsu, S Lessmann, MC Sung, T Ma, JEV Johnson
Expert systems with Applications 61, 215-234, 2016
2482016
Conditional Wasserstein GAN-based oversampling of tabular data for imbalanced learning
J Engelmann, S Lessmann
Expert Systems with Applications 174, 114582, 2021
2472021
Deep learning for detecting financial statement fraud
P Craja, A Kim, S Lessmann
Decision Support Systems 139, 113421, 2020
2152020
Genetic algorithms for support vector machine model selection
S Lessmann, R Stahlbock, SF Crone
The 2006 IEEE International Joint Conference on Neural Network Proceedings …, 2006
1782006
Predicting online shopping behaviour from clickstream data using deep learning
D Koehn, S Lessmann, M Schaal
Expert Systems with Applications 150, 113342, 2020
1772020
Extreme learning machines for credit scoring: An empirical evaluation
A Bequé, S Lessmann
Expert Systems with Applications 86, 42-53, 2017
1592017
Incorporating textual information in customer churn prediction models based on a convolutional neural network
A De Caigny, K Coussement, KW De Bock, S Lessmann
International Journal of Forecasting 36 (4), 1563-1578, 2020
1492020
A multi-objective approach for profit-driven feature selection in credit scoring
N Kozodoi, S Lessmann, K Papakonstantinou, Y Gatsoulis, B Baesens
Decision support systems 120, 106-117, 2019
1442019
Spurious patterns in Google Trends data-An analysis of the effects on tourism demand forecasting in Germany
B Bokelmann, S Lessmann
Tourism management 75, 1-12, 2019
1272019
Fairness in credit scoring: Assessment, implementation and profit implications
N Kozodoi, J Jacob, S Lessmann
European Journal of Operational Research 297 (3), 1083-1094, 2022
1252022
Can deep learning predict risky retail investors? A case study in financial risk behavior forecasting
A Kim, Y Yang, S Lessmann, T Ma, MC Sung, JEV Johnson
European Journal of Operational Research 283 (1), 217-234, 2020
1252020
A reference model for customer-centric data mining with support vector machines
S Lessmann, S Voß
European Journal of Operational Research 199 (2), 520-530, 2009
1202009
A conceptual framework for the adoption of big data analytics by e-commerce startups: a case-based approach
A Behl, P Dutta, S Lessmann, YK Dwivedi, S Kar
Information systems and e-business management 17, 285-318, 2019
1082019
Improving crime count forecasts using Twitter and taxi data
L Vomfell, WK Härdle, S Lessmann
Decision Support Systems 113, 73-85, 2018
992018
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