Title of article
Feature selection for multi-label naive Bayes classification
Author/Authors
Min-Ling Zhang، نويسنده , , José M. Pe?a، نويسنده , , Victor Robles، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
12
From page
3218
To page
3229
Abstract
In multi-label learning, the training set is made up of instances each associated with a set of labels, and the task is to predict the label sets of unseen instances. In this paper, this learning problem is addressed by using a method called Mlnb which adapts the traditional naive Bayes classifiers to deal with multi-label instances. Feature selection mechanisms are incorporated into Mlnb to improve its performance. Firstly, feature extraction techniques based on principal component analysis are applied to remove irrelevant and redundant features. After that, feature subset selection techniques based on genetic algorithms are used to choose the most appropriate subset of features for prediction. Experiments on synthetic and real-world data show that Mlnb achieves comparable performance to other well-established multi-label learning algorithms.
Keywords
Principal component analysis , genetic algorithm , Multi-label learning , feature selection , Naive Bayes
Journal title
Information Sciences
Serial Year
2009
Journal title
Information Sciences
Record number
1213733
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