Dimensionality Reduction Algorithms on High Dimensional Datasets
Journal: EMITTER International Journal of Engineering Technology (Vol.2, No. 2)Publication Date: 2014-12-01
Authors : Iwan Syarif;
Page : 28-38
Keywords : feature selection; dimensionality reduction; Genetic Algorithm (GA); Particle Swarm Optmization (PSO);
Abstract
Classification problem especially for high dimensional datasets have attracted many researchers in order to find efficient approaches to address them. However, the classification problem has become very complicatedespecially when the number of possible different combinations of variables is so high. In this research, we evaluate the performance of Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) as feature selection algorithms when applied to high dimensional datasets.Our experiments show that in terms of dimensionality reduction, PSO is much better than GA. PSO has successfully reduced the number of attributes of 8 datasets to 13.47% on average while GA is only 31.36% on average. In terms of classification performance, GA is slightly better than PSO. GA‐ reduced datasets have better performance than their original ones on 5 of 8 datasets while PSO is only 3 of 8 datasets.
Other Latest Articles
- Development and Validation of Spectrophotometric Method for Estimation of Bivalirudin
- Combination Adaptive Traffic Algorithm and Coordinated Sleeping in Wireless Sensor Network
- Hypericum Perforatum L. Protective Effects on Fatand Water-soluble Vitamins after Administration of 7, 12-Dimethylbenz(a)anthracene in Rats
- Composite Sodium Alginate and Chitosan Based Wafers for Buccal Delivery of Macromolecules
- Applicationof Computer Visionfor Polishing RobotinAutomotive Manufacturing Industries
Last modified: 2016-06-21 18:52:58