Description Usage Arguments Details Value References See Also Examples
Create an Ensemble of Pruned Set model for multilabel classification.
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mdata |
A mldr dataset used to train the binary models. |
base.algorithm |
A string with the name of the base algorithm. (Default:
|
m |
The number of Pruned Set models used in the ensemble. |
subsample |
A value between 0.1 and 1 to determine the percentage of training instances that must be used for each classifier. (Default: 0.63) |
p |
Number of instances to prune. All labelsets that occurs p times or less in the training data is removed. (Default: 3) |
strategy |
The strategy (A or B) for processing infrequent labelsets. (Default: A). |
b |
The number used by the strategy for processing infrequent labelsets. |
... |
Others arguments passed to the base algorithm for all subproblems. |
cores |
The number of cores to parallelize the training. Values higher
than 1 require the parallel package. (Default:
|
seed |
An optional integer used to set the seed. (Default:
|
Pruned Set (PS) is a multi-class transformation that remove the less common classes to predict multi-label data. The ensemble is created with different subsets of the original multi-label data.
An object of class EPSmodel containing the set of fitted
models, including:
The number of interactions
A list of PS models.
Read, J. (2008). A pruned problem transformation method for multi-label classification. In Proceedings of the New Zealand Computer Science Research Student Conference (pp. 143-150).
Other Transformation methods:
brplus(),
br(),
cc(),
clr(),
dbr(),
ebr(),
ecc(),
esl(),
homer(),
lift(),
lp(),
mbr(),
ns(),
ppt(),
prudent(),
ps(),
rakel(),
rdbr(),
rpc()
Other Powerset:
lp(),
ppt(),
ps(),
rakel()
Other Ensemble methods:
ebr(),
ecc()
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