Optimization Features Using GA-SVM Approach
Journal: International Journal of Science and Research (IJSR) (Vol.4, No. 9)Publication Date: 2015-09-05
Authors : Andy; Michael Fernando; Kristanto Halim; Gradiyanto Sanjaya;
Page : 193-197
Keywords : Feature Optimization; Genetic Algorithms GAs; Support Vector Machine SVM;
Abstract
Feature selection often used to choose the feature that maximizes the prediction of classification accuracy. Feature selection is one of the most important factor that influence classification accuracy rate. In this paper we proposed the combination of Genetic Algorithm (GA) and Support Vector Machine for feature optimization. In this research we compare the result with K Nearest Neighbor, Decision Tree, and Linear Discriminant Analysis. For better comparison, the experiment was conducted using 6 different dataset. The result shows that GA-SVM gives better accuracy than using all features or other method on 3 of 6 dataset.
Other Latest Articles
- Comparability of Power Spectral Density Estimation of EMG Signals Using Non-Parametric Methods
- Concealed Weapon Detection in a Human Body by Infrared Imaging
- Estimation of Antioxidants (Flavonoids) in Ailanthus excelsa and Balanites aegyptiaca and Effect of Growth Regulators and Salts on Antioxidants in vitro
- A Comparative Study on Emotional Maturity of Secondary School Students in Lakhimpur and Sonitpur Districts of Assam
- Effect of Traffic Volume and Speed on Noise Level Under, Interrupted and Uninterrupted Traffic Flow Condition - A Case Study on NH ? 7
Last modified: 2021-06-30 21:53:24