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Bayesian Estimation of Network-Wide Mean Failure Probability in 3G Cellular Networks

机译:3G蜂窝网络中网络平均故障概率的贝叶斯估计

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Mobile users in cellular networks produce calls, initiate connections and send packets. Such events have a binary outcome - success or failure. The term "failure" is used here in a broad sense: it can take different meanings de pending on the type of event, from packet loss or late delivery to call rejection. The Mean Failure Probability (MFP) provides a simple summary indicator of network-wide performance - i.e., a Key Performance Indicator (KPI) - that is an important input for the network operation process. However, the robust esti mation of the MFP is not trivial. The most common approach is to take the ratio of the total number of failures to the total number of requests. Such simplistic approach suffers from the presence of heavy-users, and therefore does not work well when the distribution of traffic (i.e., requests) across users is heavy-tailed - a typical case in real networks. This motivates the exploration of more ro bust methods for MFP estimation. In a previous work [1] we derived a simple but robust sub-optimal estimator, called EPWR, based on the weighted average of individual (per-user) failure probabilities. In this follow-up work we tackle the problem from a different angle and formalize the problem following a Bayesian approach, deriving two variants of non-parametric optimal estimators. We apply these estimators to a real dataset collected from a real 3G network. Our results confirm the goodness of the proposed estimators and show that EPWR, despite its simplicity, yields near-optimum performance.
机译:蜂窝网络中的移动用户产生呼叫,发起连接并发送数据包。此类事件具有二进制结果-成功或失败。术语“失败”在这里被广义地使用:它可以根据事件的类型而具有不同的含义,从数据包丢失或延迟交付到呼叫拒绝。平均失败概率(MFP)提供了整个网络性能的简单汇总指标-即关键性能指标(KPI)-这是网络运行过程的重要输入。但是,对MFP进行可靠的评估并非易事。最常见的方法是采用失败总数与请求总数之比。这种简单的方法存在大量用户,因此当大量用户之间的业务量(即请求)的分配是重尾时不能很好地工作,这是实际网络中的典型情况。这激发了探索更多用于MFP估计的稳健方法。在以前的工作中[1],我们基于单个(每用户)故障概率的加权平均值得出了一个简单但健壮的次优估计量,称为EPWR。在此后续工作中,我们从不同的角度解决问题,并按照贝叶斯方法将问题形式化,得出了非参数最优估计量的两个变体。我们将这些估算器应用于从真实3G网络收集的真实数据集。我们的结果证实了所提出的估计器的优越性,并表明EPWR尽管简单,但却能产生接近最佳的性能。

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