Document Type
Article
Publication Date
7-2014
Journal Title
International Journal of Electronics Communication and Computer Engineering
ISSN
eISSN: 2249–071X, ISSN: 2278–4209
Keywords
Feature Extraction, Binary Genetic Algorithm, Feature Selection, Pattern Classification
Disciplines
Agricultural Science | Agronomy and Crop Sciences | Applied Mathematics | Mathematics
Abstract
This article details the exploration and application of Genetic Algorithm (GA) for feature selection. Particularly a binary GA was used for dimensionality reduction to enhance the performance of the concerned classifiers. In this work, hundred (100) features were extracted from set of images found in the Flavia dataset (a publicly available dataset). The extracted features are Zernike Moments (ZM), Fourier Descriptors (FD), Lengendre Moments (LM), Hu 7 Moments (Hu7M), Texture Properties (TP) and Geometrical Properties (GP). The main contributions of this article are (1) detailed documentation of the GA Toolbox in MATLAB and (2) the development of a GA-based feature selector using a novel fitness function (kNN-based classification error) which enabled the GA to obtain a combinatorial set of feature giving rise to optimal accuracy. The results obtained were compared with various feature selectors from WEKA software and obtained better results in many ways than WEKA feature selectors in terms of classification accuracy.
Recommended Citation
Babatunde, O,
Armstrong, L,
Leng, J,
and
Diepeveen, D.
(2014), A genetic algorithm-based feature selection. International Journal of Electronics Communication and Computer Engineering, 5 (4), 899-905.
https://library.dpird.wa.gov.au/fc_researchart/275
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Agricultural Science Commons, Agronomy and Crop Sciences Commons, Applied Mathematics Commons, Mathematics Commons