Simon A. Ocansey

Work place: Department of Computational Data Science and Engineering, North Carolina Agricultural and Technical State University, Greensboro, NC 27411, USA

E-mail: ocanseysimon2015@gmail.com

Website:

Research Interests:

Biography

Simon A. Ocansey is a graduate research student at the Laboratory of Grid Modelling and Simulation of the Computational Data Science and Engineering (CDSE) Department at North Carolina Agricultural and Technical State University (NCAT), USA. He also researches machine learning algorithms and its applications in the real world. He holds Master in Transportation Science from Hasselt University (UHasselt), Belgium with specialty in Mobility Management. He Holds Bachelor of Technology Degree in Automobile Engineering from the Ho Technical University (HTU) in collaboration with Kwame Nkrumah University of Science and technology (KNUST) both in Ghana and a Higher National Diploma (HND) in Automobile Engineering from the Kumasi Technical University (KsTU), Ghana.

Author Articles
Predicting Public Transport User Honesty: A Machine Learning Approach to Lost Item Returns

By Simon A. Ocansey Makafui Agboyi Gideon L. Sackitey AKM K. Islam

DOI: https://doi.org/10.5815/ijisa.2026.02.06, Pub. Date: 8 Apr. 2026

Public transport (PT) users often experience instances of leaving items behind in the public transport system. Finders who come across these items may choose to keep them maliciously or, out of goodwill, decide to return them. This paper aims to utilize six (6) machine learning models, including LR, SVM, DT, RF, NB, and KNN, to predict the ability of finders to return found items. Nine (9) features, comprising four (4) demographic parameters (age, gender, income, and education), were used in the models’ prediction process. The study involved a total of 603 PT users in the Accra cosmopolitan area of Ghana to assess finder’s decision regarding returning found item(s). The classification success rates were obtained as follows: 86.740% (LR), 87.293% (SVM), 82.873% (DT), 85.083% (RF), 85.083% (GNB), and 87.845% (KNN) using Python codes. The RF model also performed well, considering the balance of performance with the desired precision and recall. RF, GNB, and LR achieved the highest AUC values (0.78), demonstrating strong discriminative ability in predicting user honesty. 

[...] Read more.
Other Articles