Md. Mehedi Rahman Rana

Work place: Department of CSE, Army University of Science and Technology (BAUST), Khulna

E-mail: mehedi.rahman@baust.edu.bd

Website: https://orcid.org/0009-0004-1017-0932

Research Interests:

Biography

Engg. Md. Mehedi Rahman Rana has been working as an Assistant Professor in the Department of Computer Science and Engineering at Bangladesh Army University of Science and Technology Khulna. He is a member of The Institution Of Engineers, Bangladesh and his Membership No is M - 43865. He received M.Sc. in Computer Science and Engineering (CSE) degree with thesis and B.Sc. in CSE from Khulna University at Computer Science and Engineering Discipline in 2021 and 2016 respectively. Previously he worked as a lecturer in Northern University of Business and Technology Khulna. He worked on a variety of topics including object detection and classification, image recognition and segmentation, spectral image reconstruction, document image analysis and image quality analysis. His research activities are focused in the area of computer vision, image processing, machine learning, optimization and data mining.

Author Articles
Predicting Education Level of the Farmers‟ Children of a Developing Country during COVID 19 Using Machine Learning

By Md. Mehedi Rahman Rana Md. Nasim Adnan Md. Moradul Siddique Md. Tahadur Rahman Ferdib-Al-Islam

DOI: https://doi.org/10.5815/ijmecs.2024.06.07, Pub. Date: 8 Dec. 2024

Education is one of the necessities of an individual’s life, as it enhances the self-morality and nobility that leads one towards the challenging pathways of the competitive world. In the agricultural based country, education is scarce among the children of the farmers as they suffer from poverty. After affecting with COVID-19, study dropout rate of farmers’ children is increased. We collected raw data from rural areas of different countries, and pre-processed this data before applying the machine learning algorithm to improve the performance. We used advanced machine learning models to predict whether farmer’s children will run or drop out of their education. Based on the outcomes it was viewed that, machine learning strategies substantiate to be suitable in this area. This research proposes preventive steps for dropping out of the farmers' children. It also shows that, the Random Forest being the highest reliable model for foreseeing dropout rate and education level. 

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