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基于机器学习的移动互联网客户感知分析研究

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摘要 引入Xgboost机器学习算法对移动互联网业务感知进行建模、分析。分析结果表明,在网络侧特征数据指标变量中,TCP无线成功事对移动互联网业务感知影响最大,在业务应用类别中,VOIP业务对感知最敏感。
作者 罗锐 谈澄秋
出处 《通信与信息技术》 2021年第3期52-57,共6页 Communication & Information Technology
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