Ensemble Graph Attention Networks for Cellular Network Analytics: From Model Creation to Explainability

IF 5.4 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Network and Service Management Pub Date : 2024-08-02 DOI:10.1109/TNSM.2024.3436677
Katalin Hajdú-Szücs;Péter Vaderna;Zsófia Kallus;Péter Kersch;János Márk Szalai-Gindl;Sándor Laki
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Abstract

In automated radio network control, understanding the effect of different factors on network performance is crucial. Although there are machine learning (ML) solutions that can reliably anticipate network performance expressed as key performance indicator (KPI) values, these models are typically black-box or provide only partial explanations. Most approaches are based on flat data structures and cannot exploit the graph nature of the data, being unable to quantify neighbors’ impact. In this paper, we propose a new graph neural network-based model called Ensemble Graph Attention Network (Ensemble GAT) for network KPI prediction. We show that the proposed model results in better or comparable KPI prediction performance to the state-of-the-art while also carrying information about links between neighboring cells. In addition to model creation, we investigate how explainable AI solutions can be used to provide root-cause explanations for network KPI degradation. To generate feature attributions, we introduce an adapted version of GraphLime that works with ensemble models. In addition, we propose a new technique called Neighbor Perturbation to identify the neighboring cells that have the most significant impact on KPI prediction. We demonstrate the effectiveness of these models on both synthetic and real-world datasets.
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用于蜂窝网络分析的集合图注意网络:从模型创建到可解释性
在自动无线网络控制中,了解不同因素对网络性能的影响是至关重要的。虽然有机器学习(ML)解决方案可以可靠地预测以关键性能指标(KPI)值表示的网络性能,但这些模型通常是黑箱模型或只提供部分解释。大多数方法基于平面数据结构,无法利用数据的图形特性,无法量化邻居的影响。本文提出了一种新的基于图神经网络的网络KPI预测模型,称为集成图注意网络(Ensemble GAT)。我们表明,所提出的模型的KPI预测性能优于或可与最先进的模型相媲美,同时还携带有关相邻单元之间链接的信息。除了模型创建之外,我们还研究了如何使用可解释的AI解决方案来提供网络KPI退化的根本原因解释。为了生成特征属性,我们引入了与集成模型一起工作的GraphLime的改编版本。此外,我们提出了一种称为邻居摄动的新技术,以识别对KPI预测影响最大的相邻单元。我们证明了这些模型在合成和真实数据集上的有效性。
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来源期刊
IEEE Transactions on Network and Service Management
IEEE Transactions on Network and Service Management Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
15.10%
发文量
325
期刊介绍: IEEE Transactions on Network and Service Management will publish (online only) peerreviewed archival quality papers that advance the state-of-the-art and practical applications of network and service management. Theoretical research contributions (presenting new concepts and techniques) and applied contributions (reporting on experiences and experiments with actual systems) will be encouraged. These transactions will focus on the key technical issues related to: Management Models, Architectures and Frameworks; Service Provisioning, Reliability and Quality Assurance; Management Functions; Enabling Technologies; Information and Communication Models; Policies; Applications and Case Studies; Emerging Technologies and Standards.
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