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Mining And Application of User Behavior Pattern Based on Operation And Maintenance Data

机译:基于运维数据的用户行为模式的挖掘与应用

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In order to provide users with personalized services, or to implement user-centric management, operators usually need to collect various information of users. However, in an actual network scenario, such information is often difficult to obtain accurately due to reasons such as protecting user privacy and avoiding interference with the user experience process. Common methods such as setting up a laboratory network environment, implementing user research, etc., are difficult to implement in the live network. Through the service log of the network device interface, this paper extracts a variety of data related to the user's network behavior, and proposes a comprehensive multi-dimensional data user behavior expression method, which is transformed into the expression of user behavior, including time, space and behavior semantics. For the user's daily network behavior, we propose a user behavior symbolization method for different application scenarios, and propose a user behavior pattern mining method based on PrefixSpan to mine the user behavior sequence pattern after symbolization. This method can mine the patterns of user behavior and behavior from the data, and provide the basis for personalized service and management. We used the http connection log of all mobile users of a carrier in a city for one day to conduct our experiments.
机译:为了向用户提供个性化服务,或实现以用户为中心的管理,运营商通常需要收集用户的各种信息。然而,在实际的网络场景中,由于诸如保护用户隐私和避免干扰用户体验过程等原因,通常难以准确地获得此类信息。设置实验室网络环境,实施用户研究等常见方法很难在实时网络中实现。通过网络设备接口的服务日志,提取与用户网络行为有关的各种数据,并提出了一种综合的多维数据用户行为表达方法,将其转化为用户行为的表达方式,包括时间,空间和行为语义。针对用户的日常网络行为,提出了一种针对不同应用场景的用户行为符号化方法,并提出了一种基于PrefixSpan的用户行为模式挖掘方法,以对符号化后的用户行为序列模式进行挖掘。该方法可以从数据中挖掘用户行为和行为模式,并为个性化服务和管理提供基础。我们使用某城市运营商的所有移动用户的http连接日志进行了一天的实验。

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