Multiple Comparisons in Induction Algorithms (1998)

Cached

Download Links

by David Jensen , Paul R. Cohen
Venue:Machine Learning
Citations:73 - 10 self

Documents Related by Co-Citation

4934 C4.5: Programs for Machine Learning – J R Quinlan - 1993
3909 Classification and Regression Trees – L Breiman, J H Friedman, R A Olshen, C J Stone - 1984
2868 P.: UCI Repository of Machine Learning Databases – C J Merz, Merphy - 1996
92 Randomization Tests – E S Edgington - 1995
85 Oversearching and Layered Search in Empirical Learning – J. R. Quinlan, R. M. Cameron-jones - 1995
143 Concept learning and the problem of small disjuncts – Robert C. Holte, Liane E. Acker, Bruce W. Porter - 1989
95 Linkage and autocorrelation cause feature selection bias in relational learning – David Jensen, Jennifer Neville - 2002
36 Well-Trained PETs: Improving Probability Estimation Trees – Foster Provost, Pedro Domingos - 2000
16 Adjusting for multiple comparisons in decision tree pruning – David Jensen, Matt Schmill - 1997
372 Empirical Methods for Artificial Intelligence – P R Cohen - 1995
510 Learning probabilistic relational models – Nir Friedman, Lise Getoor, Daphne Koller, Avi Pfeffer - 1999
435 The use of the area under the ROC curve in the evaluation of machine learning algorithms – Andrew P. Bradley - 1997
6 Induction with Randomization Testing – D Jensen - 1992
670 A theory and methodology of inductive learning – R S Michalski - 1983
83 Megainduction: Machine learning on very large databases – J Catlett - 1991
92 Efficient Progressive Sampling – Foster Provost , David Jensen, Tim Oates - 1999
8980 The Nature of Statistical Learning Theory – Vladimir N. Vapnik - 1995
66 The Effects of Training Set Size on Decision Tree Complexity – Oates - 1997
67 Pruning Decision Trees with Misclassification Costs – Jeffrey Bradford, Clayton Kunz, Ron Kohavi, Cliff Brunk, Carla E. Brodley - 1998