• Home
  • Browse
    • Current Issue
    • By Issue
    • By Author
    • By Subject
    • Author Index
    • Keyword Index
  • Journal Info
    • About Journal
    • Aims and Scope
    • Editorial Board
    • Publication Ethics
    • Peer Review Process
  • Guide for Authors
  • Submit Manuscript
  • Contact Us
 
  • Login
  • Register
Home Articles List Article Information
  • Save Records
  • |
  • Printable Version
  • |
  • Recommend
  • |
  • How to cite Export to
    RIS EndNote BibTeX APA MLA Harvard Vancouver
  • |
  • Share Share
    CiteULike Mendeley Facebook Google LinkedIn Twitter
Journal of Computing and Communication
arrow Articles in Press
arrow Current Issue
Journal Archive
Volume Volume 4 (2025)
Volume Volume 3 (2024)
Volume Volume 2 (2023)
Issue Issue 2
Issue Issue 1
Volume Volume 1 (2022)
AbdElminaam, D., Essam, F., Samy, H., Wagdy, J., Albert, S. (2023). MLHandwrittenRecognition: Handwritten Digit Recognition using Machine Learning Algorithms. Journal of Computing and Communication, 2(1), 9-19. doi: 10.21608/jocc.2023.282076
Diaa s AbdElminaam; Farah Essam; Hanein Samy; Judy Wagdy; steven Albert. "MLHandwrittenRecognition: Handwritten Digit Recognition using Machine Learning Algorithms". Journal of Computing and Communication, 2, 1, 2023, 9-19. doi: 10.21608/jocc.2023.282076
AbdElminaam, D., Essam, F., Samy, H., Wagdy, J., Albert, S. (2023). 'MLHandwrittenRecognition: Handwritten Digit Recognition using Machine Learning Algorithms', Journal of Computing and Communication, 2(1), pp. 9-19. doi: 10.21608/jocc.2023.282076
AbdElminaam, D., Essam, F., Samy, H., Wagdy, J., Albert, S. MLHandwrittenRecognition: Handwritten Digit Recognition using Machine Learning Algorithms. Journal of Computing and Communication, 2023; 2(1): 9-19. doi: 10.21608/jocc.2023.282076

MLHandwrittenRecognition: Handwritten Digit Recognition using Machine Learning Algorithms

Article 2, Volume 2, Issue 1, January 2023, Page 9-19  XML PDF (760.62 K)
Document Type: Original Article
DOI: 10.21608/jocc.2023.282076
View on SCiNiTO View on SCiNiTO
Authors
Diaa s AbdElminaam email orcid 1; Farah Essam2; Hanein Samy2; Judy Wagdy2; steven Albert2
1Department of Data Science , Faculty of Computer Science , Misr International University , Cairo , Egypt
2Faculty of Computer Science Misr International University, Cairo, Egypt
Abstract
Handwritten digit recognition has remained a topic of interest to computer vision scientists. Its origination precedes the emergence of the machine as it is a crucial component of the digital transformation of the majority of institutions in numerous fields. With the uprising of machine models, choosing a satisfactory and fit algorithm for this multi-class (0-9) classification problem became challenging. This paper aims to compare seven machine learning algorithms in terms of their performance metrics in recognizing handwritten digits employing two datasets. The - Nearest Neighbors (kNN), Support Vector Machine (SVM), Logistic Regression, Neural Network, Random Forest (RF), Naive Bayes, and Decision Tree models are accordingly evaluated concerning the Area Under the Curve (AUC), accuracy (ACC), F1-score (F1), precision (PREC), and recall (REC). The widely used Modified National Institute of Standards and Technology database (MNIST) dataset and the Handwritten Digit Classification dataset (HDC) have been the providers of the images on which this research is conducted. The results confirm that the Neural Networks model is a great classifier for this problem; however, it presents similar results to other machine learning classifiers in several cases. Therefore, this paper does not provide an absolute choice of a classifier for the handwritten digit recognition problem but rather explains the reason behind the performance of each model.
Keywords
OCR; Handwritten digit; Machine Learning; Computer Vision
Statistics
Article View: 943
PDF Download: 1,961
Home | Glossary | News | Aims and Scope | Sitemap
Top Top

Journal Management System. Designed by NotionWave.