2021
DOI: 10.3390/s22010089
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User Experience Estimation in Multi-Service Scenario of Cellular Network

Abstract: The estimation of user experience in a wireless network has always been a research hotspot, especially for the realization of network automation. In order to solve the problem of user experience estimation in wireless networks, we propose a two-step optimization method for the selection of the kernel function and bandwidth in a naive Bayesian classifier based on kernel density estimation. This optimization method can effectively improve the accuracy of estimation. At present, research on user experience estima… Show more

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Cited by 4 publications
(1 citation statement)
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“…Furthermore, [34] proffers a KPI-driven KQI mapping based on qualitative levels. The authors present an Adaptive Naive Bayesian Classifier and compare it with KNN (K-Near Neighbors) and Gaussian Kernel Function, to establish the state (ranging from unacceptable to excellent) of KQIs for video, IM (Instant Messaging), and web services.…”
Section: Kqi Estimationmentioning
confidence: 99%
“…Furthermore, [34] proffers a KPI-driven KQI mapping based on qualitative levels. The authors present an Adaptive Naive Bayesian Classifier and compare it with KNN (K-Near Neighbors) and Gaussian Kernel Function, to establish the state (ranging from unacceptable to excellent) of KQIs for video, IM (Instant Messaging), and web services.…”
Section: Kqi Estimationmentioning
confidence: 99%