Description Usage Arguments Details Value References Examples
Similarity-based filter for removing label noise from a dataset as a preprocessing step of classification. For more information, see 'Details' and 'References' sections.
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formula | 
 A formula describing the classification variable and the attributes to be used.  | 
data, x | 
 Data frame containing the tranining dataset to be filtered.  | 
... | 
 Optional parameters to be passed to other methods.  | 
k | 
 Number of nearest neighbors to be used.  | 
classColumn | 
 positive integer indicating the column which contains the (factor of) classes. By default, the last column is considered.  | 
BBNR removes an instance 'X' if: (i) it participates in the misclassification of other instance
(i.e. 'X' is among the k nearest neighbors of a misclassified instance and has a different class);
and (ii) its removal does not produce a misclassification in instances that, initially, were correctly
classified by 'X' (i.e. 'X' was initially among the k nearest neighbors and had the same class).
An object of class filter, which is a list with seven components:
cleanData is a data frame containing the filtered dataset.
remIdx is a vector of integers indicating the indexes for
removed instances (i.e. their row number with respect to the original data frame).
repIdx is a vector of integers indicating the indexes for
repaired/relabelled instances (i.e. their row number with respect to the original data frame).
repLab is a factor containing the new labels for repaired instances.
parameters is a list containing the argument values.
call contains the original call to the filter.
extraInf is a character that includes additional interesting
information not covered by previous items.
Delany S. J., Cunningham P. (2004): An analysis of case-base editing in a spam filtering system. In Advances in Case-Based Reasoning (pp. 128-141). Springer Berlin Heidelberg.
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