REVIEW OF LITERATURE ON FILTER AND WRAPPER METHODS FOR FEATURE SELECTION
Journal: International Journal of Engineering Sciences & Research Technology (IJESRT) (Vol.7, No. 1)Publication Date: 2018-01-30
Authors : K. Pavya; B. Srinivasan;
Page : 137-143
Keywords : Data mining; Classification; Feature selection; Filter approach; Wrapper approach.;
Abstract
In health care, automatic disease diagnosis is a precious tool because of limited observation of the expert and uncertainties in medical knowledge. Progresses in medical information technology have enabled healthcare industries to automatically collect huge quantity of data through clinical laboratory examinations. To explore these data, the past few years have envisaged the use of Computer Aided Diagnosis (CAD) systems in many hospitals and screening sites. Machine learning techniques are gradually introduced to construct the CAD systems owing to its well-built capability of extracting complex relationships in the biomedical data. Data mining is a pioneering and attractive research area due to its vast application areas and task primitives. Data classification is one of the most important tasks in data mining. Feature Selection is also known as Attribute selection which selects subset of features from original set by removing the irrelevant and redundant features. This paper focus on the literature review of two feature selection techniques namely, filter approach and wrapper approach.
Other Latest Articles
- THE DEPENDENCE OF ABSORPTION COEFFICIENT ON ATOMIC AND OXIDATION NUMBER FOR SOME ELEMENTS ACCORDING TO STRING THEORY
- SISTEM INFORMASI OLAHRAGA FUTSAL KUTAI KARTANEGARA BERBASIS WEB
- A PID controller parameter tuning method based on improved PSO
- THE EFFECT OF OXIDATION NUMBER ON REFRACTIVE INDEX BASED ON STRING THEORY
- AN EFFICIENT METHOD FOR DEEP WEB CRAWLER BASED ON ACCURACY -A REVIEW
Last modified: 2018-01-11 15:19:11