TY - JOUR TI - Handwritten Digit Recognition With Machine Learning Algorithms AB - Nowadays, the scope of machine learning and deep learning studies is increasing day by day. Handwriting recognition is one of the examples in daily life for this field of work. Data storage in digital media is a method that almost everyone is using nowadays. At the same time, it has become a necessity for people to store their notes in digital media and even take notes directly in the digital environment. As a solution to this need, applications have been developed that can recognize numbers, characters, and even text from handwriting using machine learning and deep learning algorithms. Moreover, these applications can recognize numbers, characters, and text from handwriting and convert them into visual characters. This project, investigated the performance comparison of machine learning algorithms commonly used in handwriting recognition applications and which of them are more efficient. As a result of the study, the accuracy was 98.66% with artificial neural network, 99.45% with convolutional neural network, 97.05% with K-NN, 83.57% with Naive Bayes, 97.71% with support vector machine and 88.34% with decision tree. This study also developed a handwriting recognition system for numbers similar to these mentioned applications. A desktop application interface was developed for end users to show the instant performance of some of these algorithms and allow them to experience the handwriting recognition system. AU - Demirkaya, Kübra Gülgün AU - ÇAVUŞOĞLU, ÜNAL DO - 10.21541/apjess.1060753 PY - 2022 JO - Academic Platform journal of engineering and smart systems (Online) VL - 10 IS - 1 SN - 2822-2385 SP - 9 EP - 18 DB - TRDizin UR - http://search/yayin/detay/1146451 ER -