-do-not-check-capabilities | If set, classifier capabilities are not checked before classifier is built
(use with caution). | |
-doNotMakeSplitPointActualValue | Do not make split point actual value. | |
A | Laplace smoothing for predicted probabilities. | |
B | Use binary splits only. | |
C | Set confidence threshold for pruning.
(default 0.25) | |
D | Output binary attributes for discretized attributes. | |
E | Use better encoding of split point for MDL. | |
F | Full class name of filter to use, followed
by filter options.
eg: "weka.filters.unsupervised.attribute.Remove -V -R 1,2" | default: weka.filters.supervised.attribute.AttributeSelection |
J | Do not use MDL correction for info gain on numeric attributes. | |
K | Use Kononenko's MDL criterion. | |
L | Do not clean up after the tree has been built. | |
M | Set minimum number of instances per leaf.
(default 2) | |
N | Set number of folds for reduced error
pruning. One fold is used as pruning set.
(default 3) | |
O | Do not collapse tree. | |
Q | Seed for random data shuffling (default 1). | |
R | Use reduced error pruning. | |
S | Do not perform subtree raising. | |
U | Use unpruned tree. | |
V | Invert matching sense of column indexes. | |
W | Full name of base classifier.
(default: weka.classifiers.trees.J48) | default: weka.classifiers.bayes.NaiveBayes |
Y | Use bin numbers rather than ranges for discretized attributes. | |
output-debug-info | If set, classifier is run in debug mode and
may output additional info to the console | |
precision | Precision for bin boundary labels.
(default = 6 decimal places). | |