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Using Stochastic Models to Predict User Response in Social Media

机译:使用随机模型预测社交媒体中的用户响应

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User response to contributed content in online social media depends on many factors. These include how the site lays out new content, how frequently the user visits the site, how many friends the user follows, how active these friends are, as well as how interesting or useful the content is to the user. We present a stochastic modeling framework that relates a user's behavior to details of the site's user interface and user activity and describe a procedure for estimating model parameters from available data. We apply the model to study discussions of controversial topics on Twitter, specifically, to predict how followers of an advocate for a topic respond to the advocate's posts. We show that a model of user behavior that explicitly accounts for a user discovering the advocate's post by scanning through a list of newer posts, better predicts response than models that do not.
机译:用户对在线社交媒体中贡献内容的响应取决于许多因素。这些因素包括网站如何布置新内容,用户访问网站的频率,用户跟随多少朋友,这些朋友的活跃程度以及内容对用户的有趣或有用。我们提供了一个随机建模框架,该框架将用户的行为与站点的用户界面和用户活动的详细信息相关联,并描述了一种从可用数据中估算模型参数的过程。我们将模型应用于研究Twitter上有争议的主题的讨论,尤其是预测某个主题的拥护者如何回应该拥护者的帖子。我们展示了一种用户行为模型,该模型通过扫描较新的帖子列表来明确说明用户发现了拥护者的帖子,比没有行为的模型更好地预测了响应。

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