A Meta-Heuristic Regression-Based Feature Selection for Predictive Analytics
Author(s) -
Bharat Singh,
O. P. Vyas
Publication year - 2014
Publication title -
data science journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.358
H-Index - 21
ISSN - 1683-1470
DOI - 10.2481/dsj.14-032
Subject(s) - computer science , data science , usability , scope (computer science) , transparency (behavior) , metadata , analytics , data curation , implementation , world wide web , software engineering , computer security , human–computer interaction , programming language
A high-dimensional feature selection having a very large number of features with an optimal feature subset is an NP-complete problem. Because conventional optimization techniques are unable to tackle large-scale feature selection problems, meta-heuristic algorithms are widely used. In this paper, we propose a particle swarm optimization technique while utilizing regression techniques for feature selection. We then use the selected features to classify the data. Classification accuracy is used as a criterion to evaluate classifier performance, and classification is accomplished through the use of k-nearest neighbour (KNN) and Bayesian techniques. Various high dimensional data sets are used to evaluate the usefulness of the proposed approach. Results show that our approach gives better results when compared with other conventional feature selection algorithms
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