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Using single source data to better understand User-generated Content (UGC) behavior

机译:使用单一源数据更好地了解用户生成的内容(UGC)行为

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Single source refers to the unified measurement of different aspects of the same individual based on data from multiple sources. In the context of UGC, single source data can be used to study at least two important but as yet insufficiently investigated theoretical issues. First, single source data are ideal sources for studying inter-platform dynamics such as user migration across UGC platforms. Second, single source data can help to link individual self-reported cognitive factors with web crawled individual behavior logs, to achieve better understanding of individual behavior. In this paper, we select a random sample of Sina Blog users and collect their behavior information on both Sina Blog and Sina Weibo platforms; we also conduct an online survey to collect information about their cognitive factors. Merging all data together, we observe and quantify different behavior patterns of the same people across Blog and Weibo; we also identify alternative attractiveness and perceived popularity as significant drivers of one of the most important inter-platform dynamics—switching behavior.
机译:单一来源是指基于来自多个来源的数据对同一个人不同方面的统一度量。在教资会的背景下,单一来源的数据可用于研究至少两个重要但尚未充分研究的理论问题。首先,单一来源数据是研究平台间动态(例如跨UGC平台的用户迁移)的理想来源。其次,单一源数据可以帮助将个人自我报告的认知因素与网络爬网的个人行为日志联系起来,以更好地理解个人行为。在本文中,我们随机选择一个新浪博客用户样本,并在新浪博客和新浪微博平台上收集他们的行为信息。我们还会进行在线调查,以收集有关其认知因素的信息。将所有数据合并在一起,我们观察并量化Blog和微博中同一个人的不同行为模式;我们还发现替代吸引力和感知受欢迎程度是最重要的跨平台动力之一(转换行为)的重要驱动力。

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