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Characterizing user navigation and interactions in online social networks

机译:表征在线社交网络中的用户导航和交互

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摘要

Understanding how users navigate and interact when they connect to social networking sites creates opportunities for better interface design, richer studies of social interactions, and improved design of content distribution systems. In this paper, we present an in-depth analysis of user workloads in online social networks. This study is based on detailed clickstream data, collected over a 12-day period, summarizing HTTP sessions of 37,024 users who accessed four popular social networks: Orkut, MySpace, Hi5, and LinkedIn. The data were collected from a social network aggregator website in Brazil, which enables users to connect to multiple social networks with a single authentication. Our analysis of the clickstream data reveals key features of the social network workloads, such as how frequently people connect to social networks and for how long, as well as the types and sequences of activities that users conduct on these sites. Additionally, we gather the social network topology of Orkut, so that we could analyze user interaction data in light of the social graph. Our data analysis suggests insights into how users interact with friends in Orkut, such as how frequently users visit their friends' and non-immediate friends' pages. Results show that browsing, which cannot be inferred from crawling publicly available data, accounts for 92% of all user activities. Consequently, compared to using only crawled data, silent interactions like browsing friends' pages increase the measured level of interaction among users. Additionally, we find that friends requesting content are often within close geographical proximity of the uploader. We also discuss a series of implications of our findings for efficient system and interface design as well as for advertisement placement in online social networks.
机译:了解用户在连接到社交网站时如何导航和交互,为更好的界面设计,更丰富的社交交互研究以及改进的内容分发系统设计创造了机会。在本文中,我们对在线社交网络中的用户工作负载进行了深入分析。这项研究基于在12天的时间内收集的详细点击流数据,总结了37,024个用户的HTTP会话,这些用户访问了四个流行的社交网络:Orkut,MySpace,Hi5和LinkedIn。这些数据是从巴西的社交网络聚合网站收集的,该网站使用户可以通过一次身份验证连接到多个社交网络。我们对点击流数据的分析揭示了社交网络工作负载的关键特征,例如人们与社交网络的连接频率和持续时间,以及用户在这些网站上进行的活动的类型和顺序。此外,我们收集了Orkut的社交网络拓扑,以便我们可以根据社交图分析用户交互数据。我们的数据分析可提供有关用户如何与Orkut中的朋友互动的见解,例如用户访问其朋友和非直属朋友页面的频率。结果表明,无法从爬网的公共数据中推断出浏览占所有用户活动的92%。因此,与仅使用爬网数据相比,无声交互(例如浏览朋友的页面)提高了用户之间的交互程度。此外,我们发现请求内容的朋友通常在上传者的地理位置附近。我们还将讨论我们的发现对有效的系统和界面设计以及在线社交网络中的广告放置的一系列含义。

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