The WEKA data mining software: an update M Hall, E Frank, G Holmes, B Pfahringer, P Reutemann, IH Witten ACM SIGKDD explorations newsletter 11 (1), 10-18, 2009 | 23766 | 2009 |
Correlation-based feature selection for machine learning MA Hall University of Waikato, 1999 | 4473 | 1999 |
Correlation-based feature selection of discrete and numeric class machine learning MA Hall University of Waikato, Department of Computer Science, 2000 | 2441 | 2000 |
Logistic model trees N Landwehr, M Hall, E Frank Machine learning 59 (1), 161-205, 2005 | 1685 | 2005 |
Weka: Practical machine learning tools and techniques with Java implementations IH Witten, E Frank, LE Trigg, MA Hall, G Holmes, SJ Cunningham | 1623* | 1999 |
Benchmarking attribute selection techniques for discrete class data mining MA Hall, G Holmes IEEE Transactions on Knowledge and Data engineering 15 (6), 1437-1447, 2003 | 1528 | 2003 |
The WEKA workbench E Frank, MA Hall, IH Witten Morgan Kaufmann, 2016 | 1428 | 2016 |
Correlation-based feature subset selection for machine learning MA Hall Thesis submitted in partial fulfillment of the requirements of the degree of …, 1998 | 1293 | 1998 |
Data mining in bioinformatics using Weka E Frank, M Hall, L Trigg, G Holmes, IH Witten Bioinformatics 20 (15), 2479-2481, 2004 | 1080 | 2004 |
Flow clustering using machine learning techniques A McGregor, M Hall, P Lorier, J Brunskill International workshop on passive and active network measurement, 205-214, 2004 | 755 | 2004 |
Feature selection for machine learning: comparing a correlation-based filter approach to the wrapper. MA Hall, LA Smith FLAIRS conference 1999, 235-239, 1999 | 726 | 1999 |
Weka-a machine learning workbench for data mining E Frank, M Hall, G Holmes, R Kirkby, B Pfahringer, IH Witten, L Trigg Data mining and knowledge discovery handbook, 1269-1277, 2009 | 663 | 2009 |
A simple approach to ordinal classification E Frank, M Hall European conference on machine learning, 145-156, 2001 | 662 | 2001 |
Data mining: practical machine learning tools and techniques E Frank, MA Hall Morgan Kaufmann, 2011 | 650 | 2011 |
Practical feature subset selection for machine learning MA Hall, LA Smith Springer 20, 181-191, 1998 | 621 | 1998 |
Weka manual for version 3-6-0 RR Bouckaert, E Frank, M Hall, R Kirkby, P Reutemann, A Seewald, ... University of Waikato, Hamilton, New Zealand 2, 2008 | 519* | 2008 |
Gene selection from microarray data for cancer classification—a machine learning approach Y Wang, IV Tetko, MA Hall, E Frank, A Facius, KFX Mayer, HW Mewes Computational biology and chemistry 29 (1), 37-46, 2005 | 477 | 2005 |
Locally weighted naive bayes E Frank, M Hall, B Pfahringer arXiv preprint arXiv:1212.2487, 2012 | 450 | 2012 |
WEKA---Experiences with a Java Open-Source Project RR Bouckaert, E Frank, MA Hall, G Holmes, B Pfahringer, P Reutemann, ... The Journal of Machine Learning Research 11, 2533-2541, 2010 | 415 | 2010 |
Feature subset selection: a correlation‐based SVM filter approach B Li, Q Wang, J Hu IEEJ Transactions on Electrical and Electronic Engineering 6 (2), 173-179, 2011 | 392 | 2011 |