شماره ركورد كنفرانس :
3208
عنوان مقاله :
Feature Selection in Multi-label classification through MLQPFS
پديدآورندگان :
Soheili, Majid Faculty of Computer and Information Technology Engineering - Qazvin Branch Islamic Azad University , Eftekhari Moghadam, Amir-Massoud Faculty of Computer and Information Technology Engineering - Qazvin Branch Islamic Azad University
كليدواژه :
Feature selection , multi-label classification , Quadratic programming , mutual information , mutual information
عنوان كنفرانس :
چهارمين كنفرانس بين المللي كنترل، ابزار دقيق و اتوماسيون
چكيده لاتين :
In multi-label classification, each data instance is
associated with a set of labels. Feature selection is one of the most
significant challenges in multi-label classification. Irrelevant and
dependent features can mislead the learning phase of multi-label
classification. Therefore it is important to select the effective
features. A large and growing body of literature has investigated
multi-label feature selection problem. Most of these studies used
incremental approach. In this paper a new algorithm has been
proposed called MLQPFS which selects subset of features in such
a way that redundancy among the selected features will be
minimized meanwhile the relevancy between the selected features
and class labels will be maximized. MLQPFS applies quadratic
programming to optimize feature selection process. In order to
evaluate the performance of proposed algorithm, MLQPFS and
PMU have been compared in three multi-label data sets. The
experimental results showed that MLQPFS has better
performance than conventional incremental feature selection
methods such as PMU.