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Noise Tolerance of an Energy-Scalable Deep Learning Model with Two Extreme Bit-Precisions

Title
Noise Tolerance of an Energy-Scalable Deep Learning Model with Two Extreme Bit-Precisions
Author(s)
Jung, SangwooKung, Jaeha
Issued Date
2019-10-07
Citation
International System-on-Chip Design Conference, ISOCC 2019, pp.71 - 72
Type
Conference Paper
ISBN
9781728124780
ISSN
2472-9655
Abstract
In this paper, we perform the noise analysis on an energy-scalable deep learning model with two extreme bit-precisions, named MixNet. In real-world applications, there might be a great deal of noisy inputs that are collected from mobile sensors, and the training is performed on those noisy datasets. According to our initial set of experiments, MixNet has lower sensitivity to the noise in the training dataset, when compared to the original CNN model with high-precision. As a result, it is expected that the MixNet can be trained better even in a noisy environment than the original high-precision deep learning models. © 2019 IEEE.
URI
http://hdl.handle.net/20.500.11750/47914
DOI
10.1109/ISOCC47750.2019.9078497
Publisher
Institute of Semiconductor Engineers of Korea (반도체공학회), IEEE Circuits and Systems (CAS) Society
Related Researcher
  • 궁재하 Kung, Jaeha
  • Research Interests 딥러닝; 가속하드웨어; 저전력 하드웨어; 고성능 시스템
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Appears in Collections:
Department of Electrical Engineering and Computer Science Intelligent Digital Systems Lab 2. Conference Papers

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