Title of article :
Improving the Operation of Text Categorization Systems with Selecting Proper Features Based on PSO-LA
Author/Authors :
Rahimirad, Mozhgan Department of Computer - Ahvaz Branch Islamic Azad University , Mosleh, Mohammad Department of Computer Engineering - Dezfoul Branch Islamic Azad University , Rahmani, Amir Masoud Department of Computer Engineering - Science and Research Branch Islamic Azad University
Abstract :
With the explosive growth in
amount of information, it is highly required to
utilize tools and methods in order to search, filter
and manage resources. One of the major problems
in text classification relates to the high dimensional
feature spaces. Therefore, the main goal of text
classification is to reduce the dimensionality of
features space. There are many feature selection
methods. However, only a few methods are utilized
for huge text classification problems. In this paper,
we propose a new wrapper method based on
Particle Swarm Optimization (PSO) algorithm
and Support Vector Machine (SVM). We combine
it with Learning Automata in order to make it
more efficient. To evaluate the efficiency of the
proposed method, we compare it with a method
which selects features based on Genetic Algorithm
over the Reuters-21578 dataset. The simulation
results show that our proposed algorithm works
more efficiently.
Keywords :
Particle Swarm optimization(PSO) , Learning Automata(LA) , classification , feature selection , Text mining
Journal title :
Astroparticle Physics