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Weighted network graph for interpersonal communication with temporal regularity

机译:与时间规律性的人际关系通信的加权网络图

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Over the last decade, interpersonal communication has attracted more attention from researchers than before. Although the volume of data generated through various communication devices and tools could be enormous, the recent decrease in storage cost enables us to record and store it. The analysis of interpersonal communication is useful to estimate influence in social relationships among people, to detect communities, and to recommend potential friends for users on social networking services. A network graph, which is a mathematical model that represents people as nodes and past opportunities of interpersonal communication as edges, works in such analysis. However, when the capacity of the number of edges recordable in a graph database is limited, or when only a limited number of edges is used for high-speed analysis, it is still unclear which edges should be prioritized and utilized in the analysis. Previous studies suggested that edges in network graphs can be weighted on the basis of the aggregated duration of connections, the number of connections, or the connection time. However, temporal regularity in interpersonal communication has not been well considered in the previous studies. Therefore, in this paper, we propose an edge weighting method for network graphs from interpersonal communication that determines edge weighs on the basis of the scores obtained from the spectral analysis technique. The spectral analysis technique is utilized to numerically deal with temporal regularity and frequency of interpersonal communication. An examination using real records verifies that by using our edge weighting method, link prediction works better under a condition of the limited number of edges usable for the analysis. We also deeply analyze and present the distributions of the frequencies that characterize interpersonal communication.
机译:在过去的十年中,人际关系的沟通比以前更多的研究人员引起了更多的关注。虽然通过各种通信设备和工具生成的数据量可能是巨大的,但最近的存储成本降低使我们能够记录和存储它。人际交往的分析可用于估计人们之间的社会关系中的影响,以检测社区,并为社交网络服务中的用户推荐潜在的朋友。一个网络图形,它是一个数学模型,它代表人们作为节点的节点和人际关系交际的机会,在这种分析中有效。然而,当图表数据库中可记录的边的数量有限时,或者仅使用有限数量的边沿用于高速分析时,仍不清楚应在分析中优先考虑哪些边缘。以前的研究表明,网络图中的边缘可以基于聚合的连接持续时间,连接数或连接时间来加权。然而,在以前的研究中,人际交往中的时间规律性尚未得到很好的考虑。因此,在本文中,我们提出了一种从人际通信的网络图中的边缘加权方法,其基于从光谱分析技术获得的分数确定边缘重量。光谱分析技术用于数值处理时间规律性和人际关系通信的频率。使用真实记录的检查验证了通过使用我们的边缘加权方法,在可用于分析的有限边缘的条件下,链路预测更好。我们还深入分析并呈现了表征人际关系通信的频率的分布。

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