Classification functions for handwritten digit recognition

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Abstract

A classification function maps a set of vectors into several classes. A machine learning problem is treated as a design problem for partially defined classification functions. To realize classification functions for MNIST hand written digits, three different architectures are considered: Single-unit realization, 45-unit realization, and 45-unit ×r realization. The 45-unit realization consists of 45 ternary classifiers, 10 counters, and a max selector. Test accuracy of these architectures are compared using MNIST data set.

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APA

Sasao, T., Horikawa, Y., & Iguchi, Y. (2021). Classification functions for handwritten digit recognition. IEICE Transactions on Information and Systems, E104D(8), 1076–1082. https://doi.org/10.1587/transinf.2020LOP0002

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