adams.flow.transformer.WekaClassifierRanker
Performs a quick evaluation using cross-validation on a single dataset (or evaluation on a separate test set if the number of folds is less than 2) to rank the classifiers received on the input and forwarding the x best ones. Further evaluation can be performed using the Experimenter.
Flow input/output:
- input: weka.classifiers.Classifier[]
- output: weka.classifiers.Classifier[]
The logging level for outputting errors and debugging output.
command-line | -logging-level <OFF|SEVERE|WARNING|INFO|CONFIG|FINE|FINER|FINEST> |
default | WARNING |
min-user-mode | Expert |
The name of the actor.
command-line | -name <java.lang.String> |
default | WekaClassifierRanker |
The annotations to attach to this actor.
command-line | -annotation <adams.core.base.BaseAnnotation> |
default |
|
If set to true, transformation is skipped and the input token is just forwarded as it is.
command-line | -skip <boolean> |
default | false |
If set to true, the flow execution at this level gets stopped in case this actor encounters an error; the error gets propagated; useful for critical actors.
command-line | -stop-flow-on-error <boolean> |
default | false |
min-user-mode | Expert |
If enabled, then no errors are output in the console; Note: the enclosing actor handler must have this enabled as well.
command-line | -silent <boolean> |
default | false |
min-user-mode | Expert |
The maximum number of top-ranked classifiers to forward; use -1 to forward all of them (ranked array).
command-line | -max <int> |
default | 3 |
minimum | -1 |
The seed value to use in the cross-validation.
command-line | -seed <long> |
default | 1 |
The number of folds to use in cross-validation.
command-line | -folds <int> |
default | 10 |
minimum | 1 |
The measure used for ranking the classifiers.
command-line | -measure <Correlation coefficient|Root mean squared error|Root relative squared error|Mean absolute error|Root absolute error|Combined: (1-abs(CC)) + RRSE + RAE|Accuracy|Kapp> |
default | CC |
The class label index to use in case of class-specific measures.
command-line | -class-label <adams.data.weka.WekaLabelIndex> |
default | first |
example | An index is a number starting with 1; apart from label names (case-sensitive), the following placeholders can be used as well: first, second, third, last_2, last_1, last; numeric indices can be enforced by preceding them with '#' (eg '#12'); label names can be surrounded by double quotes. |
The name of the callable actor that is used for obtaining the training set.
command-line | -train <adams.flow.core.CallableActorReference> |
default | train |
The name of the callable actor that is used for obtaining the test set (only if folds <2).
command-line | -test <adams.flow.core.CallableActorReference> |
default | test |
If true, then for optimizers like GridSearch and MultiSearch the best setup that was found will be output instead of the optimizer setup.
command-line | -output-best <boolean> |
default | false |
The number of threads to use for evaluating the classifiers in parallel (-1 means one for each core/cpu).
command-line | -num-threads <int> |
default | 0 |