#' utiml: Utilities for Multi-Label Learning
#'
#' The utiml package is a framework for the application of classification
#' algorithms to multi-label data. Like the well known MULAN used with Weka, it
#' provides a set of multi-label procedures such as sampling methods,
#' transformation strategies, threshold functions, pre-processing techniques and
#' evaluation metrics. The package was designed to allow users to easily
#' perform complete multi-label classification experiments in the R environment.
#'
#' Currently, the main methods supported are:
#' \enumerate{
#' \item{
#' \strong{Classification methods}:
#' \code{\link[=baseline]{ML Baselines}},
#' \code{\link[=br]{Binary Relevance (BR)}},
#' \code{\link[=brplus]{BR+}},
#' \code{\link[=cc]{Classifier Chains}},
#' \code{\link[=clr]{Calibrated Label Ranking (CLR)}},
#' \code{\link[=dbr]{Dependent Binary Relevance (DBR)}},
#' \code{\link[=ebr]{Ensemble of Binary Relevance (EBR)}},
#' \code{\link[=ecc]{Ensemble of Classifier Chains (ECC)}},
#' \code{\link[=eps]{Ensemble of Pruned Set (EPS)}},
#' \code{\link[=homer]{Hierarchy Of Multilabel classifiER (HOMER)}},
#' \code{\link[=lift]{Label specIfic FeaTures (LIFT)}},
#' \code{\link[=lp]{Label Powerset (LP)}},
#' \code{\link[=mbr]{Meta-Binary Relevance (MBR or 2BR)}},
#' \code{\link[=mlknn]{Multi-label KNN (ML-KNN)}},
#' \code{\link[=ns]{Nested Stacking (NS)}},
#' \code{\link[=ppt]{Pruned Problem Transformation (PPT)}},
#' \code{\link[=prudent]{Pruned and Confident Stacking Approach (Prudent)}},
#' \code{\link[=ps]{Pruned Set (PS)}},
#' \code{\link[=rakel]{Random k-labelsets (RAkEL)}},
#' \code{\link[=rdbr]{Recursive Dependent Binary Relevance (RDBR)}},
#' \code{\link[=rpc]{Ranking by Pairwise Comparison (RPC)}}
#' }
#' \item{
#' \strong{Evaluation methods}:
#' \code{\link[=cv]{Performing a cross-validation procedure}},
#' \code{\link[=multilabel_confusion_matrix]{Confusion Matrix}},
#' \code{\link[=multilabel_evaluate]{Evaluate}},
#' \code{\link[=multilabel_measures]{Supported measures}}
#' }
#' \item{
#' \strong{Pre-process utilities}:
#' \code{\link[=fill_sparse_mldata]{Fill sparse data}},
#' \code{\link[=normalize_mldata]{Normalize data}},
#' \code{\link[=remove_attributes]{Remove attributes}},
#' \code{\link[=remove_labels]{Remove labels}},
#' \code{\link[=remove_skewness_labels]{Remove skewness labels}},
#' \code{\link[=remove_unique_attributes]{Remove unique attributes}},
#' \code{\link[=remove_unlabeled_instances]{Remove unlabeled instances}},
#' \code{\link[=replace_nominal_attributes]{Replace nominal attributes}}
#' }
#' \item{
#' \strong{Sampling methods}:
#' \code{\link[=create_holdout_partition]{Create holdout partitions}},
#' \code{\link[=create_kfold_partition]{Create k-fold partitions}},
#' \code{\link[=create_random_subset]{Create random subset}},
#' \code{\link[=create_subset]{Create subset}},
#' \code{\link[=partition_fold]{Partition fold}}
#' }
#' \item{
#' \strong{Threshold methods}:
#' \code{\link[=fixed_threshold]{Fixed threshold}},
#' \code{\link[=lcard_threshold]{Cardinality threshold}},
#' \code{\link[=mcut_threshold]{MCUT}},
#' \code{\link[=pcut_threshold]{PCUT}},
#' \code{\link[=rcut_threshold]{RCUT}},
#' \code{\link[=scut_threshold]{SCUT}},
#' \code{\link[=subset_correction]{Subset correction}}
#' }
#' }
#'
#' However, there are other utilities methods not previously cited as
#' \code{\link{as.bipartition}}, \code{\link{as.mlresult}},
#' \code{\link{as.ranking}}, \code{\link{multilabel_prediction}}, etc. More
#' details and examples are available on
#' \href{https://github.com/rivolli/utiml}{utiml repository}.
#'
#' @section Notes:
#' We use the \code{\link{mldr}} package, to manipulate multi-label data.
#' See its documentation to more information about handle multi-label dataset.
#'
#' @section Cite as:
#' \preformatted{
#' @article\{RJ-2018-041,
#' author = \{Adriano Rivolli and Andre C. P. L. F. de Carvalho\},
#' title = \{\{The utiml Package: Multi-label Classification in R\}\},
#' year = \{2018\},
#' journal = \{\{The R Journal\}\},
#' doi = \{10.32614/RJ-2018-041\},
#' url = \{https://doi.org/10.32614/RJ-2018-041\},
#' pages = \{24--37\},
#' volume = \{10\},
#' number = \{2\}
#' \}}
#'
#' @author
#' \itemize{
#' \item Adriano Rivolli <rivolli@@utfpr.edu.br>
#' }
#' This package is a result of my PhD at Institute of Mathematics and Computer
#' Sciences (ICMC) at the University of Sao Paulo, Brazil.
#'
#' PhD advisor: Andre C. P. L. F. de Carvalho
#'
#' @import mldr
#' @import parallel
#' @import ROCR
#' @importFrom methods is
#' @docType package
#' @name utiml
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