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Inference of mobile users'social relationships using Bayesian belief network

机译:使用贝叶斯信仰网络推断移动用户社会关系

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Today, mobile phones due to the rapid growth of new technologies and the emergence of a new generation of smart phones have become more than a communication tool that not only resolves the user's communication needs, but also provide them, services for many applications. List of mobile phone subscribers include slow-level simple concepts such as time and place of calls, talk time, etc. The analysis of these low-level concepts and their influences on each other can lead to identification of higher-level concepts such as user social relationships, feelings as well as many other concepts that are not recorded in the list. Data mining process as a powerful knowledge management techniques, by exploring the history list from the interaction of mobile subscribers, which represents intentions and actual behavior of each of them, as well as behavioral characteristics of each one can provide approaches and policies for social network analysis of mobile phone subscribers and ultimately brought intelligent semantic services by deduction and finally adaptation of behavioral and social implications. In this paper, due to uncertainty in the mobile sensors, Bayesian networks have been used to identify the relations of friendship between mobile users. In addition, tried to have a special look at each person and important parameters for creation of Bayesian network to be set independently according to each person's behavioral characteristics and behavioral similarities between the two individuals for every call. The results show that the proposed method has higher accuracy (0.80) than previous methods. After calculating, the probabilities of friends believe based on social network friendship that its analysis can play an important role in identifying influential actors in social networks. Therefore, the proposed framework due to focus on mobile social networks could be used in the real world.
机译:如今,手机由于新技术的快速增长和新一代智能手机的出现已经变得不仅仅是一种通信工具,不仅可以解决用户的通信需求,而且还为许多应用程序提供服务。手机订阅者列表包括慢速简单概念,如电话,通话时间等的时间和地点。对这些低级概念的分析及其对彼此的影响可能导致识别用户等更高级别的概念社会关系,感受以及许多未在列表中记录的其他概念。数据挖掘过程作为一种强大的知识管理技术,通过从移动用户的交互探索历史列表,这代表了它们中的每一个的意图和实际行为,以及每个人的行为特征都可以为社交网络分析提供方法和策略移动电话订阅者最终通过扣除和最终适应行为和社会影响的智能语义服务。在本文中,由于移动传感器的不确定性,贝叶斯网络已被用于确定移动用户之间的友谊关系。此外,试图根据每个人的行为特征和每个呼叫之间的两个人之间的行为特征和行为相似度,特别看看每个人和重要参数。结果表明,该方法的准确性更高(0.80)比以前的方法更高。计算后,朋友的概率基于社交网络友谊,即其分析可以在识别社交网络中的有影响力的演员方面发挥重要作用。因此,在现实世界中可以使用由于对移动社交网络的专注而导致的框架。

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