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Framework for Retrieving Relevant Contents Related to Fashion from Online Social Network Data

机译:从在线社交网络数据中检索与时尚相关的相关内容的框架

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Nowadays, online social networks such as Facebook and Twitter become increasingly popular. These social media channels allow people to create, share, and comment on information about anything related to their real-life. Such information is very useful for various application domains, e.g., decision support systems or online advertising. In this paper, we propose a comprehensive framework for retrieving relevant contents from online social network data. Our approach is proposed on the basic of the Vector Space Model and Support Vector Machine to process and classify raw text data. Our experiments demonstrate the utility and accuracy of the framework in retrieving fashion related contents from Twitter and Facebook.
机译:如今,Facebook和Twitter等在线社交网络变得越来越受欢迎。这些社交媒体渠道允许人们创建,分享和评论有关与其现实生活有关的信息的信息。这些信息对于各种应用域,例如决策支持系统或在线广告非常有用。在本文中,我们提出了一个全面的框架,用于从在线社交网络数据中检索相关内容。我们的方法是在矢量空间模型的基本上提出,支持向量机来处理和分类原始文本数据。我们的实验证明了从Twitter和Facebook中检索时尚相关内容的框架的实用性和准确性。

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