ARTICLE
TITLE

Handwritten Digit Recognition Using Machine Learning Algorithms

SUMMARY

Handwritten character recognition is one of the practically important issues in pattern recognition applications. The applications of digit recognition include in postal mail sorting, bank check processing, form data entry, etc. The main problem lies within the ability on developing an efficient algorithm that can recognize hand written digits, which is submitted by users by the way of a scanner, tablet, and other digital devices. This paper presents an approach to off-line handwritten digit recognition based on different machine learning techniques. The main objective of this paper is to ensure the effectiveness and reliability of the approached recognition of handwritten digits. Several machines learning algorithms (i.e. Multilayer Perceptron, Support Vector Machine, Naïve Bayes, Bayes Net, Random Forest, J48, and Random Tree) have been used for the recognition of digits using WEKA. The experimental results showed that the highest accuracy was obtained by Multilayer Perceptron with the value of 90.37%.

 Articles related

Raul Mordenti    

The transformation of the text from the pre-information technology and Gutenberg modes to the model marked by information or digital technology is such that it substantially changes not only the concept of the text but also the nature of philology itself... see more


K. S. Khabarlak,L. S. Koriashkina    

Context. The subject of this paper is adversarial attacks, their types, reasons for the emergence. A simplified fast and effective logistic regression attack algorithm has been presented. The work’s relevance is explained by the fact that neural network’... see more


Rosalina rosalina,Johanes Parlindungan Hutagalung,Genta Sahuri    

These days there is a huge demand in “storing the information available in paper documents into a computer storage disk”. Digitizing manual filled forms lead to handwriting recognition, a process of translating handwriting into machine editable text. The... see more