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首页> 外文期刊>Computer communication review >On-demand Time-decaying Bloom Filters for Telemarketer Detection
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On-demand Time-decaying Bloom Filters for Telemarketer Detection

机译:用于电话推销员检测的按需随时间变化的Bloom过滤器

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摘要

Several traffic monitoring applications may benefit from the availability of efficient mechanisms for approximately tracking smoothed time averages rather than raw counts. This paper provides two contributions in this direction. First, our analysis of Time-decaying Bloom filters, formerly proposed data structures devised to perform approximate Exponentially Weighted Moving Averages on streaming data, reveals two major shortcomings: biased estimation when measurements are read in arbitrary time instants, and slow operation resulting from the need to periodically update all the filter's counters at once. We thus propose a new construction, called On-demand Time-decaying Bloom filter, which relies on a continuous-time operation to overcome the accuracy/performance limitations of the original window-based approach. Second, we show how this new technique can be exploited in the design of high performance stream-based monitoring applications, by developing VoIPSTREAM, a proof-of-concept real-time analysis version of a formerly proposed system for telemarketing call detection. Our validation results, carried out over real telephony data, show how VoIPSTREAM closely mimics the feature extraction process and traffic analysis techniques implemented in the offline system, at a significantly higher processing speed, and without requiring any storage of per-user call detail records.
机译:几种流量监控应用程序可能会受益于有效机制的可用性,该机制可以近似跟踪平滑的时间平均值而不是原始计数。本文在这个方向上提供了两个贡献。首先,我们对时间衰减布隆过滤器的分析(先前提出的旨在对流数据执行近似指数加权移动平均值的数据结构)揭示了两个主要缺点:在任意时刻读取测量值时的偏差估计;以及由于需要而导致的慢速操作定期一次更新所有过滤器的计数器。因此,我们提出了一种新的结构,称为按需时间衰减布隆滤波器,它依靠连续时间操作来克服原始基于窗口方法的精度/性能限制。其次,我们展示了如何通过开发VoIPSTREAM(一种以前提出的电话销售呼叫检测系统的概念验证实时分析版本)来在高性能的基于流的监视应用程序设计中利用这种新技术。我们对真实电话数据进行的验证结果表明,VoIPSTREAM如何以明显更高的处理速度紧密模拟脱机系统中实现的功能提取过程和流量分析技术,而无需存储每个用户的呼叫详细记录。

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