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Big Data in Online Social Networks: User Interaction Analysis to Model User Behavior in Social Networks

机译:在线社交网络中的大数据:建模社交网络中用户行为的用户交互分析

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With hundreds of millions of users worldwide, social networks provide incredible opportunities for social connection, learning, political and social change, and individual entertainment and enhancement in a multiple contexts. Because many social interactions currently take place in online networks, social scientists have access to unprecedented amounts of information about social interaction. Prior to the advent of such online networks, these investigations required resource-intensive activities such as random trials, surveys, and manual data collection to gather even small data sets. Now, massive amounts of information about social networks and social interactions are recorded. This wealth of big data can allow social scientists to study social interactions on a scale and at a level of detail that has never before been possible. Our goal is to evaluate the value of big data in various social applications and build a framework that models the cost/utility of data. By considering important problems such as Trend Analysis, Opinion Change and User Behavior Analysis during major events in online social networks, we demonstrate the significance of this problem. Furthermore, in each case we present scalable techniques and algorithms that can be used in an online manner. Finally, we propose the big data value evaluation framework that weighs in the cost as well as the value of data to determine capacity modeling in the context of data acquisition.
机译:社交网络在全球拥有数亿用户,在多种情况下为社交联系,学习,政治和社会变革以及个人娱乐和增强提供了令人难以置信的机会。由于当前在线网络中发生了许多社交互动,因此社会科学家可以访问有关社交互动的前所未有的信息。在此类在线网络出现之前,这些调查需要进行资源密集型活动,例如随机试验,调查和手动数据收集,以收集甚至很小的数据集。现在,记录了有关社交网络和社交互动的大量信息。如此大量的大数据可以使社会科学家以前所未有的规模和细节水平研究社会互动。我们的目标是评估大数据在各种社交应用程序中的价值,并建立一个对数据的成本/效用建模的框架。通过考虑在线社交网络中主要事件期间的重要问题(例如趋势分析,观点变更和用户行为分析),我们证明了此问题的重要性。此外,在每种情况下,我们都会提供可在线使用的可扩展技术和算法。最后,我们提出了一个大数据价值评估框架,该框架考虑了成本以及数据价值,以确定在数据采集的情况下的容量建模。

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