Relationship between recognition accuracy and numerical precision in convolutional neural network models

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Abstract

Quantization is an important technique for implementing convolutional neural networks on edge devices. Quantization often requires relearning, but relearning sometimes cannot be always be applied because of issues such as cost or privacy. In such cases, it is important to know the numerical precision required to maintain accuracy. We accurately simulate calculations on hardware and accurately measure the relationship between accuracy and numerical precision.

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APA

Nakahara, Y., Kiyama, M., Amagasaki, M., & Iida, M. (2020). Relationship between recognition accuracy and numerical precision in convolutional neural network models. IEICE Transactions on Information and Systems, E103D(12), 2528–2529. https://doi.org/10.1587/transinf.2020PAL0002

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