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Poor Data Throughput Root Cause Analysis in Mobile Networks using Deep Neural Network

机译:使用深神经网络的移动网络数据吞吐量根本原因分析

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As the mobile data usage is increasing with the complexity of new services, ensuring proper quality of experience (QoE) becomes challenging. While traditional machine learning techniques have been intensively applied in mobile networks, new training models are also mushrooming and are to some extent explored to handle large amount of data and complexity of new services in mobile data networks. Lately, deep learning algorithms have gained popularity since they scale efficiently with large data input and make use of the computing power to train the models. This paper proposes a deep learning model based on a deep neural network (DNN) architecture to train and evaluate the root cause analysis (RCA) for poor throughput in mobile networks. The proposed approach considered both the radio and the core network performance indicators of a mobile data network as inputs to ensure end-to-end correlation. Furthermore, the local interpretable model-agnostic explanations (LIME) method was used to provide features importance both for the global system and for individual subscribers. The prediction accuracy on the unseen data was 98.9% with an area under the receiver operating characteristic (ROC) curve of 99.87% and an F1_score of 99.23%.
机译:随着移动数据使用率随着新服务的复杂性而增加,确保正确的经验质量(QoE)变得具有挑战性。虽然传统的机器学习技术已经密集应用于移动网络,但新的培训模型也是蘑菇,并且在某种程度上探索了移动数据网络中新服务的大量数据和复杂性。最近,深度学习算法已经获得了人们的流行,因为它们有效地缩放了大数据输入并利用计算能力来训练模型。本文提出了一种基于深度神经网络(DNN)架构的深层学习模型,用于培训和评估移动网络中吞吐量差的根本原因分析(RCA)。所提出的方法认为移动数据网络的无线电和核心网络性能指标作为输入,以确保端到端相关性。此外,局部可解释的模型 - 不可止结的解释(石灰)方法用于提供全球系统和单个用户的特征重要性。看不见的数据的预测精度为98.9%,接收器下的面积为99.87%,F1_Score为99.23%。

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