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XGBoost for multilabel classification?

Is it possible to use XGBoost for multi-label classification? Now I use OneVsRestClassifier over GradientBoostingClassifier from sklearn . It works, but use only one core from my CPU. In my data I have ~45 features and the task is to predict about 20 columns with binary (boolean) data. Metric is mean average precision (map@7). If you have a short example of code to share, that would be great.

One possible approach, instead of using OneVsRestClassifier which is for multi-class tasks, is to use MultiOutputClassifier from the sklearn.multioutput module.

Below is a small reproducible sample code with the number of input features and target outputs requested by the OP

import xgboost as xgb
from sklearn.datasets import make_multilabel_classification
from sklearn.model_selection import train_test_split
from sklearn.multioutput import MultiOutputClassifier
from sklearn.metrics import accuracy_score

# create sample dataset
X, y = make_multilabel_classification(n_samples=3000, n_features=45, n_classes=20, n_labels=1,
                                      allow_unlabeled=False, random_state=42)

# split dataset into training and test set
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=123)

# create XGBoost instance with default hyper-parameters
xgb_estimator = xgb.XGBClassifier(objective='binary:logistic')

# create MultiOutputClassifier instance with XGBoost model inside
multilabel_model = MultiOutputClassifier(xgb_estimator)

# fit the model
multilabel_model.fit(X_train, y_train)

# evaluate on test data
print('Accuracy on test data: {:.1f}%'.format(accuracy_score(y_test, multilabel_model.predict(X_test))*100))

There are a couple of ways to do that, one of which is the one you already suggested:

1.

from xgboost import XGBClassifier
from sklearn.multiclass import OneVsRestClassifier
# If you want to avoid the OneVsRestClassifier magic switch
# from sklearn.multioutput import MultiOutputClassifier

clf_multilabel = OneVsRestClassifier(XGBClassifier(**params))

clf_multilabel will fit one binary classifier per class, and it will use however many cores you specify in params (fyi, you can also specify n_jobs in OneVsRestClassifier , but that eats up more memory).

2. If you first massage your data a little by making k copies of every data point that has k correct labels, you can hack your way to a simpler multiclass problem. At that point, just

clf = XGBClassifier(**params)
clf.fit(train_data)
pred_proba = clf.predict_proba(test_data)

to get classification margins/probabilities for each class and decide what threshold you want for predicting a label. Note that this solution is not exact: if a product has tags (1, 2, 3) , you artificially introduce two negative samples for each class.

You can add a label to each class you want to predict. For example if this is your data:

X1 X2 X3 X4  Y1 Y2 Y3
 1  3  4  6   7  8  9
 2  5  5  5   5  3  2

You can simply reshape your data by adding a label to the input, according to the output, and xgboost should learn how to treat it accordingly, like so:

X1 X2 X3 X3 X_label Y
 1  3  4  6   1     7
 2  5  5  5   1     5
 1  3  4  6   2     8
 2  5  5  5   2     3
 1  3  4  6   3     9
 2  5  5  5   3     2

This way you will have a 1-dimensional Y , but you can still predict many labels.

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