Please use this identifier to cite or link to this item: https://hdl.handle.net/10321/4686
Title: A split-then-join lightweight hybrid majority vote classifier
Authors: Gadebe, Moses L. 
Ojo, Sunday O.
Kogeda, Okuthe P. 
Keywords: Split-then-join;Ensemble;KNN;Gaussian Naïve Bayes;Lightweight algorithm
Issue Date: 2022
Publisher: Springer International Publishing
Source: Gadebe, M.L., Ojo, S.O. and Kogeda, O.P. 2022. A split-then-join lightweight hybrid majority vote classifier. Communications in Computer and Information Science. 1572 CCIS: 167-180. doi:10.1007/978-3-031-05767-0_14
Conference: Third International Conference, icSoftComp 2021, Changa, Anand, India, December 10–11, 2021 
Abstract: 
Classification of human activities using smallest dataset is achievable with tree-oriented (C4.5, Random Forest, Bagging) algorithms. However, the KNN and Gaussian Naïve Bayes (GNB) achieve higher accuracy only with largest dataset. Of interest KNN is challenged with minor feature problem, where two similar features are predictable far from each other because of limited number of classification features. In this paper the split-then-join combiner strategy is employed to split classification features into first and secondary (KNN and GNB) classifier based on integral conditionality function. Therefore, top K prediction voting list of both classifier are joined for final voting. We simulated our combined algorithm and compared it with other classification algorithms (Support Vector Machine, C4.5, K NN, and Naïve Bayes, Random Forest) using R programming language with Caret, Rweka and e1071 libraries using 3 selected datasets with 27 combined human activities. The result of the study indicates that our combined classifier is effective and reliable than its predecessor Naïve Bayes and KNN. The results of study shows that our proposed algorithm is compatible with C4.5, Boosted Trees and Random Forest and other ensemble algorithms with accuracy and precision reaching 100% in most of 27 human activities.
URI: https://hdl.handle.net/10321/4686
ISBN: 9783031057663
ISSN: 1865-0929
1865-0937 (Online)
DOI: 10.1007/978-3-031-05767-0_14
Appears in Collections:Research Publications (Academic Support)

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