4G信号RSSI推荐系统,提高ISP服务质量

Tanatpon Duangta, Watcharaphong Yookwan, K. Chinnasarn, A. Boonsongsrikul
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引用次数: 0

摘要

4G信号RSSI推荐系统就是其中一种监控方法。本地用户的使用率提高了交通信号的质量,以循环接收更多的流量。本文提出了一种预测的方法,并在每个位置的区域内使用的数据速率流量。该方法对模型性能的比较结果为:梯度提升树、决策树和随机森林的RMSE分别为0.291、0.316和0.346。梯度增强树、决策树和随机森林的相关性分别为0.976、0.971和0.966,梯度增强树、决策树和随机森林的准确率分别为97.8%、97.4%和97%。集成学习方法的RMSE、相关系数和准确率分别为0.312、0.972和97.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
4G Signal RSSI Recommendation System for ISP Quality of Service Improvement
4G Signal RSSI Recommendation System is one of the monitoring methods. The usage rate of local users improves the quality of traffic signals to cycle to receive increased traffic. This paper proposed a method for Prediction and the traffic of data rates used within the area at each location. The result of the proposed approach comparing the performance of models was: the RMSE Gradient Boost Tree, Decision Tree, and Random Forest were 0.291, 0.316 and 0.346, respectively. The correlation will be 0.976, 0.971, and 0.966 for Gradient Boost Tree, Decision Tree, and Random Forest, respectively, and the accuracy of Gradient Boost Tree, Decision Tree, and Random Forest were 97.8%, 97.4%, and 97%, respectively. The results of ensemble learning methods, the RMSE, correlation, and accuracy were: 0.312, 0.972, and 97.5%.
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