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A Comparison of Three Classification Algorithms for Handwritten Digit Recognition

机译:三个分类算法对手写数字识别的比较

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摘要

Handwritten digits recognition is considered as a core to a diversity of emerging application. It is used widely by computer vision and machine learning researchers for performing practical applications such as computerized bank check numbers reading. However, executing a computerized system to carry out certain types of duties is not easy and it is a challenging matter. Recognizing the numeral handwriting of a person from another is a hard task because each individual has a unique handwriting way. The selection of the classifiers and the number of features play a vast role in achieving best possible accuracy of classification. This paper presents a comparison of three classification algorithms namely Naive Bayes (NB), Multilayer Perceptron (MLP) and K_Star algorithm based on correlation features selection (CFS) using NIST handwritten dataset. The objective of this comparison is to find out the best classifier among the three ones that can give an acceptable accuracy rate using a minimum number of selected features. The accuracy measurement parameters are used to assess the performance of each classifier individually, which are precision, recall and F-measure. The results show that K_Star algorithm gives better recognition rate than NB and MLPas it reached the accuracy of 82.36%.
机译:手写的数字识别被视为新兴应用程序多样性的核心。它被计算机视觉和机器学习研究人员广泛用于执行实际应用,如计算机化银行支票号码读数。然而,执行计算机化系统执行某些类型的职责并不容易,这是一个具有挑战性的事情。认识到另一个人的数字手写是一项艰巨的任务,因为每个人具有独特的笔迹方式。选择分类器和功能的数量在实现最佳的分类准确性方面发挥着重要作用。本文呈现三个分类算法即朴素贝叶斯(NB),多层感知器(MLP)和K_Star算法基于相关的比较提供使用NIST手写数据集的选择(CFS)。此比较的目的是在三个中找到最佳分类器,可以使用最小数量的所选功能给出可接受的精度率。精度测量参数用于分别评估每个分类器的性能,这是精确的,召回和F测量。结果表明,K_STAR算法提供比NB和MLPA更好的识别率,它达到了82.36%的准确性。

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