Seun Ayeni

Work place: Interlink Polytechnic, Ijebu Jesa, 233114, Nigeria

E-mail: seun.ayeni@yahoo.com

Website:

Research Interests: Software Creation and Management, Software Engineering, Computer systems and computational processes, Artificial Intelligence, Database Management System

Biography

Seun Ayeni was born in Ilesa of Osun State, Nigeria in 1985. He had his bachelor of technology (BTech) in computer engineering from Ladoke Akintola University of Technology, Ogbomoso, Nigeria in 2009 and as at the time of conducting this research, he was undergoing his Master of Science (MSc) degree in computer science at Obafemi Awolowo University, Ile Ife, Nigeria.

He is currently an assistant lecturer at department of Computer Engineering Interlink Polytechnic, Ijebu Jesa, Osun State, Nigeria. His research interests include artificial intelligence (AI), Information system analysis and design, software engineering, and database management system.

Mr. Ayeni seun is currently a member of International Association of Engineers.

Author Articles
A Mobile-Based Fuzzy System for Diagnosing Syphilis (Sexually Transmitted Disease)

By Alaba T. Owoseni Isaac O. Ogundahunsi Seun Ayeni

DOI: https://doi.org/10.5815/ijitcs.2015.01.04, Pub. Date: 8 Dec. 2014

The high rate at which Africans die of syphilis yearly has been majorly attributed to the uneven ratio of the patients to competent medical practitioners who provide Medicare. This mortality rate has always drawn the attention of researchers and different approaches had been used to bring the rate down. This paper provides a software solution that personifies the expert-like way of providing diagnostic service to patients who suffer this disease. It is capable of making approximate diagnosis based on uncertainties. The system has been structured into five components: user interface, fuzzification, knowledge base, inference engine and defuzzification. The user interface uses a graphic user interface based method of human-computer interaction while the fuzzification component has transformed crisp quantities into fuzzy quantities using both interval-valued and S-curve membership functions. The reasoning has been achieved using root sum square (RSS) method and transformation of fuzzy values to scalar ones was through weighted average method. This system was tested and found effective.

[...] Read more.
Other Articles