multiclass documentation
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#' \item \code{reg:logistic} logistic regression.
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#' \item \code{binary:logistic} logistic regression for binary classification. Output probability.
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#' \item \code{binary:logitraw} logistic regression for binary classification, output score before logistic transformation.
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#' \item \code{multi:softmax} set xgboost to do multiclass classification using the softmax objective, you also need to set num_class(number of classes).
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#' \item \code{multi:softprob} same as softmax, but output a vector of ndata * nclass, which can be further reshaped to ndata, nclass matrix. The result contains predicted probability of each data point belonging to each class.
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#' \item \code{num_class} set the number of classes. To use only with multiclass objectives.
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#' \item \code{multi:softmax} set xgboost to do multiclass classification using the softmax objective. Class is a number and should be from 0 \code{tonum_class}
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#' \item \code{multi:softprob} same as softmax, but output a vector of ndata * nclass, which can be further reshaped to ndata, nclass matrix. The result contains predicted probabilities of each data point belonging to each class.
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#' \item \code{rank:pairwise} set xgboost to do ranking task by minimizing the pairwise loss.
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#' }
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#' \item \code{base_score} the initial prediction score of all instances, global bias. Default: 0.5
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% Generated by roxygen2 (4.1.0): do not edit by hand
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% Generated by roxygen2 (4.1.1): do not edit by hand
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% Please edit documentation in R/xgb.train.R
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\name{xgb.train}
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\alias{xgb.train}
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\item \code{reg:logistic} logistic regression.
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\item \code{binary:logistic} logistic regression for binary classification. Output probability.
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\item \code{binary:logitraw} logistic regression for binary classification, output score before logistic transformation.
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\item \code{multi:softmax} set xgboost to do multiclass classification using the softmax objective, you also need to set num_class(number of classes).
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\item \code{multi:softprob} same as softmax, but output a vector of ndata * nclass, which can be further reshaped to ndata, nclass matrix. The result contains predicted probability of each data point belonging to each class.
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\item \code{num_class} set the number of classes. To use only with multiclass objectives.
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\item \code{multi:softmax} set xgboost to do multiclass classification using the softmax objective. Class is a number and should be from 0 \code{tonum_class}
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\item \code{multi:softprob} same as softmax, but output a vector of ndata * nclass, which can be further reshaped to ndata, nclass matrix. The result contains predicted probabilities of each data point belonging to each class.
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\item \code{rank:pairwise} set xgboost to do ranking task by minimizing the pairwise loss.
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}
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\item \code{base_score} the initial prediction score of all instances, global bias. Default: 0.5
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