luuil / MLLCWFS

Source code for paper "A Label Correlation Based Weighting Feature Selection Approach for Multi-label Data"

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

MLLCWFS

A Label Correlation Based Weighting Feature Selection Approach for Multi-Label Data (MLLCWFS)

Abstract Exploiting label correlation is important for multi-label learning, where each instance is associated with a set of labels. However, most of existing multi-label feature selection methods ignore the label correlation. Therefore, we propose a Label Correlation Based Weighting Feature Selection Approach for Multi-Label Data, called MLLCWFS. It is a framework developed from traditional filtering feature selection methods for single-label data. To exploit the label correlation, we compute the importance of each label in mutual information, and adopt three weighting strategies to evaluate the correlation between features and labels. Extensive experiments conducted on four benchmark data sets using two base classifiers demonstrate that our approach is superior to the state-of-theart feature selection algorithms for multi-label data.

Keywords: multi-label, feature selection, label correlation, label weighting

The paper will be published at Volume 9659 of the Lecture Notes in Computer Science series, Springer.

Github repository here.

About

Source code for paper "A Label Correlation Based Weighting Feature Selection Approach for Multi-label Data"


Languages

Language:C++ 60.2%Language:MATLAB 37.5%Language:Objective-C 1.2%Language:C 1.1%