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首页> 外文期刊>Progress in Artificial Intelligence >A Generative Adversarial Learning-Based Approach for Cell Outage Detection in Self-Organizing Cellular Networks
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A Generative Adversarial Learning-Based Approach for Cell Outage Detection in Self-Organizing Cellular Networks

机译:基于生成的对冲学习的自我组织蜂窝网络中的细胞中断检测方法

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摘要

For enabling automatic deployment and management of cellular networks, Self-Organizing Network (SON) was boosted to enhance network performance, to improve service quality, and to reduce operational and capital expenditure. Cell outage detection is an essential functionality of SON to autonomously detect cells that fail to provide services, due to either software or hardware faults. Machine learning represents an effective tool for such a task. However, traditional classification algorithms for cell outage detection are likely to construct a biased classifier when training samples in one class significantly outnumber other classes. To counter this problem, in this letter, we present a novel method that is able to learn from imbalanced cell outage data in cellular networks, through combining Generative Adversarial Network (GAN) and Adaboost. Specifically, the proposed approach utilizes GAN to change distribution of imbalanced dataset by synthesizing more samples for minority class, and then uses Adaboost to classify the calibrated dataset. Experimental results show significant improvement of classification performance for imbalanced cell outage data, on the basis of several metrics including Receiver Operating Characteristic (ROC), precision, recall rate, and F-value.
机译:为了实现蜂窝网络的自动部署和管理,自组织网络(儿子)被提升以提高网络性能,以提高服务质量,并降低运营和资本支出。 Cell中断检测是儿子自主检测由于软件或硬件故障而无法提供服务的单元的基本功能。机器学习代表了这样的任务的有效工具。然而,当培训样本在一个阶级中的训练显着远不是其他类时,传统的细胞中断检测的传统分类算法可能会构建偏置分类器。为了反击这个问题,在这封信中,我们介绍了一种新的方法,可以通过组合生成的对抗网络(GaN)和Adaboost来从蜂窝网络中的不平衡的细胞中断数据学习。具体地,所提出的方法利用GaN通过合成少数群体类的更多样本来改变不平衡数据集的分布,然后使用Adaboost来分类校准数据集。实验结果表明,基于几个度量,包括接收器操作特征(ROC),精度,召回率和F值,显着提高了不平衡的细胞中断数据的分类性能。

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