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Dagging (3.7)

AnalyticsIntegrationsWekaWeka (3.7)Classification Algorithms
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This meta classifier creates a number of disjoint, stratified folds out of the data and feeds each chunk of data to a copy of the supplied base classifier

Predictions are made via averaging, since all the generated base classifiers are put into the Vote meta classifier.

Useful for base classifiers that are quadratic or worse in time behavior, regarding number of instances in the training data.

For more information, see:

Ting, K.M., Witten, I.

H.: Stacking Bagged and Dagged Models.In: Fourteenth international Conference on Machine Learning, San Francisco, CA, 367-375, 1997.

(based on WEKA 3.7)

For further options, click the 'More' - button in the dialog.

All weka dialogs have a panel where you can specify classifier-specific parameters.

Node details

Input ports
  1. Type: Table
    Training data
    Training data
Output ports
  1. Type: Weka 3.7 Classifier
    Trained model
    Trained model

Extension

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