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Keywords: Neural network
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Journal Articles
Text Complexity Analysis of Chinese and foreign academic English writing via mobile devices based on neural network and deep learning
Available to Purchase
Journal:
Library Hi Tech
Library Hi Tech (2023) 41 (5): 1317–1332.
Published: 17 May 2022
...Qiucheng Liu Purpose In order to analyze the text complexity of Chinese and foreign academic English writings, the artificial neural network (ANN) under deep learning (DL) is applied to the study of text complexity. Firstly, the research status and existing problems of text complexity...
Journal Articles
A deep neural network based context-aware smart epidemic surveillance in smart cities
Available to Purchase
Journal:
Library Hi Tech
Library Hi Tech (2022) 40 (5): 1159–1178.
Published: 30 June 2021
.... Design/methodology/approach A deep neural network (DNN) based context aware smart epidemic system has been proposed to prevent and monitor epidemic spread in a geographical area. Various neural networks (NNs) have been used: LSTM, RNN, BPNN to detect the level of disease, direction of spread of disease...
