Comparison of Feature Selection Techniques in Knowledge Discovery Process
Journal: TEM JOURNAL - Technology, Education, Management, Informatics (Vol.3, No. 4)Publication Date: 2014-11-27
Authors : Dijana Oreski; Tomislav Novosel;
Page : 285-290
Keywords : Data mining; feature selection; classification accuracy; big data.;
Abstract
The process of knowledge discovery in data consists of five steps. Data preparation, which includes data cleaning and feature selection, takes away from 60% to 95% total time of the whole process. Thus, it is crucial phase of the process. The purpose of this research is to investigate feature selection techniques performance by conducting empirical research. Our comparison of three feature selection techniques reveals significant difference in feature selection techniques performance.
Other Latest Articles
- Passive Collecting of Solar Radiation Energy using Transparent Thermal Insulators, Energetic Efficiency of Transparent Thermal Insulators
- A Critical Analysis of the Arguments from Alternation and Recollection for the Immortality of the Soul in Plato’s Phaedo
- Intimate Marxist Space: The Dialectic House
- How and Why to Analogize Socratic Questioning to Zen Buddhist Koan Practice
- The Need for Basic Rights: A Critique of Nozick’s Entitlement Theory
Last modified: 2014-12-05 07:48:35