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首页> 外文期刊>Applied Sciences >Real-Time Recognition of Calling Pattern and Behaviour of Mobile Phone Users through Anomaly Detection and Dynamically-Evolving Clustering
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Real-Time Recognition of Calling Pattern and Behaviour of Mobile Phone Users through Anomaly Detection and Dynamically-Evolving Clustering

机译:通过异常检测和动态演化的聚类实时识别手机用户的呼叫模式和行为

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摘要

In the competitive telecommunications market, the information that the mobile telecom operators can obtain by regularly analysing their massive stored call logs, is of great interest. Although the data that can be extracted nowadays from mobile phones have been enriched with much information, the data solely from the call logs can give us vital information about the customers. This information is usually related with the calling behaviour of their customers and it can be used to manage them. However, the analysis of these data is normally very complex because of the vast data stream to analyse. Thus, efficient data mining techniques need to be used for this purpose. In this paper, a novel approach to analyse call detail records (CDR) is proposed, with the main goal to extract and cluster different calling patterns or behaviours, and to detect outliers. The main novelty of this approach is that it works in real-time using an evolving and recursive framework.
机译:在竞争激烈的电信市场中,移动电信运营商可以通过定期分析其大量存储的呼叫日志来获取的信息非常受关注。尽管如今可以从手机中提取的数据已经丰富了很多信息,但是仅来自通话记录的数据可以为我们提供有关客户的重要信息。此信息通常与客户的呼叫行为有关,可以用来管理他们。但是,由于要分析的数据流很大,因此对这些数据的分析通常非常复杂。因此,有效的数据挖掘技术需要用于此目的。本文提出了一种分析呼叫详细记录(CDR)的新颖方法,其主要目标是提取和聚类不同的呼叫模式或行为,并检测异常值。这种方法的主要新颖之处在于,它使用不断发展的递归框架实时工作。

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