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A Minimal Subset of Features Using Feature Selection for Handwritten Digit Recognition
January 2017 • Areej Alsaafin, Ashraf Elnagar
Many systems of handwritten digit recognition built using the complete set of features in order to enhance the accuracy. However, these systems lagged in terms of time and memory. These two issues are very critical issues especially for real time applications. Therefore, using Feature Selection (FS) with suitable machine learning technique for digit recognition contributes to facilitate solving the issues of time and memory by minimizing the number of features used to train the model. This paper examines various F…