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首页> 外文期刊>Communications, China >Anomalous cell detection with kernel density-based local outlier factor
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Anomalous cell detection with kernel density-based local outlier factor

机译:基于核密度的局部离群因子的异常细胞检测

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摘要

Since data services are penetrating into our daily life rapidly, the mobile network becomes more complicated, and the amount of data transmission is more and more increasing. In this case, the traditional statistical methods for anomalous cell detection cannot adapt to the evolution of networks, and data mining becomes the mainstream. In this paper, we propose a novel kernel density-based local outlier factor (KLOF) to assign a degree of being an outlier to each object. Firstly, the notion of KLOF is introduced, which captures exactly the relative degree of isolation. Then, by analyzing its properties, including the tightness of upper and lower bounds, sensitivity of density perturbation, we find that KLOF is much greater than 1 for outliers. Lastly, KLOF is applied on a real-world dataset to detect anomalous cells with abnormal key performance indicators (KPIs) to verify its reliability. The experiment shows that KLOF can find outliers efficiently. It can be a guideline for the operators to perform faster and more efficient trouble shooting.
机译:由于数据服务迅速渗透到我们的日常生活中,因此移动网络变得越来越复杂,数据传输量也越来越多。在这种情况下,用于细胞异常检测的传统统计方法无法适应网络的发展,数据挖掘成为主流。在本文中,我们提出了一种新颖的基于核密度的局部离群值因子(KLOF),以为每个对象分配离群值。首先,介绍了KLOF的概念,它精确地捕获了相对隔离度。然后,通过分析其特性(包括上下限的紧密性,密度扰动的敏感性),我们发现离群值的KLOF远远大于1。最后,将KLOF应用于实际数据集,以检测具有异常关键性能指标(KPI)的异常细胞,以验证其可靠性。实验表明,KLOF可以有效地找到异常值。它可以为操作员提供更快,更有效的故障排除指南。

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