Open Access Article

Title: Application value of data mining technology in ultra dense heterogeneous wireless networks

Authors: Yuming Zhong; Leyou Chen

Addresses: Educational Technology and Information Center, Guangzhou Panyu Polytechnic, Guangzhou, 511483, China ' School of Law, South China Normal University, Guangzhou, 510006, China

Abstract: In the era of the internet, a large amount of data is constantly generated, which has led to the emergence of network data mining technology. To improve access network security and user network experience, data mining technology is applied to ultra dense heterogeneous wireless networks. A switching algorithm based on user personalised preferences is proposed and a network security prediction module based on data mining is designed. Experimental data shows that when the number of networks is 10,000, the computational time cost based on the multi-attribute vertical switching algorithm is 3.45 ms. The switching algorithm based on user consumption preferences has a computational time cost of 0.97 ms, saving approximately 71.9% of the time. When the number of users exceeds 200, the throughput of the predictive network security switching algorithm based on data mining exceeds that of the analytic hierarchy process switching algorithm. The blocking rate is lower, which can better achieve balanced network selection and improve user network experience.

Keywords: data mining; ultra dense isomerism; wireless network; user preferences; network security.

DOI: 10.1504/IJCSYSE.2025.146789

International Journal of Computational Systems Engineering, 2025 Vol.9 No.10, pp.10 - 19

Received: 13 Jul 2023
Accepted: 19 Aug 2023

Published online: 18 Jun 2025 *