Proceedings of the 2018 3rd International Conference on Electrical, Automation and Mechanical Engineering (EAME 2018) 2018
DOI: 10.2991/eame-18.2018.7
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The Development of E-government under the Influence of Big Data

Abstract: Abstract-Countries around the world have introduced various new policies to adapt to the development of big data. The Chinese government also attaches great importance to the big data industry. The main purpose of this paper is to explore specific methods and suggestions to improve the management mode of the government under the background of big data. By analyzing the impact of large data on E-government and the current situation in China, combining with the existing research and related data, this paper puts… Show more

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“…Most of the existing research regarding the optimization of the system was presented by Ghodousi et al (2016) dealing with K -means clustering, Güven et al (2019) utilizing Naive Bayes classifier, Hanifi et al . (2022) using doc2vec and cosine similarity, Hong et al . (2018) dealing with E-government using big data, James (2009) evaluating the satisfaction of local citizens using probabilistic algorithms, Liu et al (2021) and Kamper (2022) employing word segmentation, Li et al (2023) using medical text classification based on Kalman filtering and Magoutas et al .…”
Section: Literature Reviewmentioning
confidence: 99%
“…Most of the existing research regarding the optimization of the system was presented by Ghodousi et al (2016) dealing with K -means clustering, Güven et al (2019) utilizing Naive Bayes classifier, Hanifi et al . (2022) using doc2vec and cosine similarity, Hong et al . (2018) dealing with E-government using big data, James (2009) evaluating the satisfaction of local citizens using probabilistic algorithms, Liu et al (2021) and Kamper (2022) employing word segmentation, Li et al (2023) using medical text classification based on Kalman filtering and Magoutas et al .…”
Section: Literature Reviewmentioning
confidence: 99%