Paper
29 March 2023 Research on network traffic prediction based on multi-feature fusion clustering and XGBoost model
Lubo Geng, Kai Tang, Xiao Quan, Ning Ma, Yanfeng Sui, Hongkui Xu, Xiao Li, Zongbao Gao
Author Affiliations +
Proceedings Volume 12594, Second International Conference on Electronic Information Engineering and Computer Communication (EIECC 2022); 125941A (2023) https://doi.org/10.1117/12.2671427
Event: Second International Conference on Electronic Information Engineering and Computer Communication (EIECC 2022), 2022, Xi'an, China
Abstract
With the development of mobile network technology, network traffic has not only experienced exponential explosive growth, but also its application scenarios have become more and more extensive. It is a challenging proposition to find an efficient and accurate matching prediction model based on massive idiosyncratic data. This scheme proposes to introduce EMD modal decomposition to decompose the local feature components of data based on the time-scale features of the data itself, to do cluster analysis on the components by K-mean clustering algorithm, and then to model and predict the clustered local feature components by XGBoost model, so as to reduce the data dimensionality and prediction complexity. The results show that the modeling and prediction of the clustered local feature components using XGBoost model effectively improves the model prediction accuracy.
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Lubo Geng, Kai Tang, Xiao Quan, Ning Ma, Yanfeng Sui, Hongkui Xu, Xiao Li, and Zongbao Gao "Research on network traffic prediction based on multi-feature fusion clustering and XGBoost model", Proc. SPIE 12594, Second International Conference on Electronic Information Engineering and Computer Communication (EIECC 2022), 125941A (29 March 2023); https://doi.org/10.1117/12.2671427
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KEYWORDS
Data modeling

Modal decomposition

Autoregressive models

Education and training

Feature fusion

Industrial applications

Industry

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