Indexing Based Feature Selection by Applying Ant Colony Optimization Method for Improving Web Page Classification
-
https://doi.org/10.14419/ijet.v7i3.27.17882
Received date: August 19, 2018
Accepted date: August 19, 2018
Published date: August 15, 2018
-
Ant colony optimization, firefly algorithm, particle swarm optimization, cuckoo search algorithm, bat algorithms, wolf search and genetic algorithms or programming. -
Abstract
In this information age many research work are carried out in web page classification to acquire the relevant and appropriate information. To be more specific, for enhancing the web page classification to obtain the optimized feature sets are chosen by utilizing the evolutionary algorithms. Normally, these algorithms are designed by the heuristic principles stimulated by natural evolution. After analyzing the significance of the various evolutionary algorithms deployed by several researchers in this domain so far, this work also intended to apply them to acquire the best solutions (enhanced features). In general, applying the evolutionary algorithms the fittest genes are generated and determined by the fitness function. Once the fittest genes are decided picking up the fittest individual genomes from a population for taking them to the next generations is the challenging task. In this article a novel approach is proposed to choose the best solutions.
-
References
- Chitra P & Venkatesh P, “Multiobjective evolutionary computation algorithms for solving task scheduling problem on heterogeneous systems”, International journal of knowledge-based and intelligent engineering systems, Vol.14, No.1,(2010), pp.21-30.
- Yang XS & He X, “Firefly algorithm: recent advances and applications”, International Journal of Swarm Intelligence, Vol.1, No.1,(2013), pp.36-50.
- Zhang Q & Richard S, “Web Mining: A Survey of Current Research, Techniques and Software”, International Journal of Information Technology & Decision Making, (2008), pp.683–720.
- Wu S & Li Y, “Pattern-Based Web Mining Using Data Mining Techniques”, International Journal of e-Education, e-Business, e-Management and e-Learning, (2013), pp.163-167.
- Li Y, Chen XZ & Yang BR, “Research on web mining-based intelligent search engine”, International Conference on Machine Learning and Cybernetics, (2002), pp.386-390.
- Hendtlass T, “Particle Swarm Optimization and high dimensional problem spaces”, IEEE Congress on Evolutionary Computation, (2009), pp.1988-1994.
- Yang XS & Deb S, “Cuckoo Search via Levy flights”, World Congress on Nature and Biologically Inspired Computing, (2015), pp.61-68.
- San PE, “Classification of Web Pages using TF-IDF and Ant Colony Optimization”, International Journal of Scientific Engineering & Technology Research, (2014), pp.61-68.
- Kim C & Shim K, “Text: Automatic template extraction from heterogeneous web pages”, IEEE Transactions on knowledge and data Engineering, Vol.23, No.4,(2011), pp.612-626.
- Xue B, Zhang M & Brown WN, “Particle Swarm Optimization for Feature Selection in Classification: A multi-objective approach”, IEEE Transactions on Cybernets, (2013), pp.1656-1671.
- A Mukanbetkaliyev, S Amandykova, Y Zhambayev, Z Duskaziyeva, A Alimbetova (2018). The aspects of legal regulation on staffing of procuratorial authorities of the Russian Federation and the Republic of Kazakhstan Opción, Año 33. 187-216.
- G Cely Galindo (2017) Del Prometeo griego al de la era-biós de la tecnociencia. Reflexiones bioéticas Opción, Año 33, No. 82 (2017):114-133
-
Downloads
-
How to Cite
M. James Raj, A., & Sagayaraj Francis, F. (2018). Indexing Based Feature Selection by Applying Ant Colony Optimization Method for Improving Web Page Classification. International Journal of Engineering and Technology, 7(3.27), 227-232. https://doi.org/10.14419/ijet.v7i3.27.17882
