Olatubosun Olabode

Work place: Department of Computer Sciences of Federal University of Technology, Akure, Nigeria

E-mail: olabode_olatubosun@yahoo.co.uk

Website:

Research Interests: Artificial Intelligence, Computational Learning Theory

Biography

Olabode Olatubosun is a lecturer in the department of computer sciences, Federal University of Technology, Akure, Nigeria where he assumes the position of a Reader. He had his bachelor of technology (1991), master of technology (1999) and doctor of philosophy all in computer science (2005) at Federal University of Technology, Akure, Nigeria. He is a member of Science Association of Nigeria. His research interests include, artificial intelligence, machine learning.

Author Articles
Comparative Descriptive Analysis of Breast Cancer Tissues Using K-means and Self Organizing Map

By Alaba T. Owoseni Olatubosun Olabode Kolawole G. Akintola

DOI: https://doi.org/10.5815/ijitcs.2018.08.07, Pub. Date: 8 Aug. 2018

Data mining is a descriptive and predictive data analytical technique that discovers meaningful and useful knowledge from dataset. Clustering is one of the descriptive analytic techniques of data mining that uses latent statistical information that exists among dataset to group them into meaningful and or useful groups. In clinical decision making, information from medical tests coupled with patients’ medical history is used to make recommendations, and predictions. However, these voluminous medical datasets analysis is always dependent of individual analyzer that might have in one way or the other introduced human error. In other to solve this problem, many automated analyses have been proposed by researchers using various machine learning techniques and various forms of dataset. In this paper, dataset from electrical impedance imaging of breast tissues are clustered using two unsupervised algorithms (k-means and self-organizing map). Result of the performances of these machine learning algorithms as implemented with R i368 version 3.4.2 shows a slight outperformance of K-means in terms of classification accuracy over self-organizing map for the considered dataset.

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