The arise of cutting-edge technologies and services such as XR promise to change the concepts of how day-to-day things are done. At the same time, the appearance of modern and decentralized architectures approaches has given birth to a new generation of mobile networks such as 5G, as well as outlining the roadmap for B5G and posterior. These networks are expected to be the enablers for bringing to life the Metaverse and other futuristic approaches. In this sense, this work presents an ML-based (Machine Learning) framework that allows the estimation of service Key Quality Indicators (KQIs). For this, only information reachable to operators is required, such as statistics and configuration parameters from these networks. This strategy prevents operators from avoiding intrusion into the user data and guaranteeing privacy. To test this proposal, 360-Video has been selected as a use case of Virtual Reality (VR), from which specific KQIs are estimated such as video resolution, frame rate, initial startup time, throughput, and latency, among others. To select the best model for each KQI, a search grid with a cross-validation strategy has been used to determine the best hyperparameter tuning. To boost the creation of each KQI model, feature engineering techniques together with cross-validation strategies have been used. The performance is assessed using MAE (Mean Average Error) and the prediction time. The outcomes point out that KNR (K-Near Neighbors) and RF (Random Forest) are the best algorithms in combination with Feature Selection techniques. Likewise, this work will help as a baseline for E2E-Quality-of-Experience-based network management working in conjunction with network slicing, virtualization, and MEC, among other enabler technologies.
翻译:XR 等尖端技术和服务的出现,如XR 承诺改变如何进行日常工作的概念。 同时,现代和分散式建筑方法的出现使得新一代移动网络如5G的出现,以及B5G和后天体的路线图的概要。这些网络可望成为使Meteval和其他未来方法发挥作用的推动因素。从这个意义上讲,这项工作提出了一个基于ML(Machine Learning)的框架,用于估算服务的关键质量指标(KQI)。为此,只需要向操作者提供信息,例如这些网络的统计和配置参数。这一战略防止操作者进入用户数据,并概述了B5G和后天体的路线图。为了测试这个提议,360-Video被选为虚拟真实(VR)案例,从中估算出具体的 KQI,例如视频解析、框架速率、初始启动时间、输入时间和透析等。为了选择每个 KQI, 与每个运行者的最佳搜索网, 使用SMARF 战略一起进行搜索。