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Topic modeling for social media content: A practical approach

机译:社交媒体内容的主题建模:一种实用的方法

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Perceiving the discussed topic in social media brings a great amount of value to different fields, such as marketing, security, education, and management. Topic modeling provides a powerful method for projecting text documents into topic space. In this paper, we explore an unsupervised topic modeling approach that incorporates LDA algorithm toward discovering the topics in social media content. Empirical experiments on social media datasets with 90,527 records reveal that this approach is quite effective for detecting the topic facets and extracting their dynamics over time. By analyzing the studied dataset, five main topics were discovered accurately by the presented algorithm according to the domain experts' comments. The presented model is quite general and can be applied in a wide variety of domains to automatically mining topics from the social media channels.
机译:在社交媒体中感知所讨论的主题会给营销,安全,教育和管理等不同领域带来巨大价值。主题建模为将文本文档投影到主题空间提供了一种强大的方法。在本文中,我们探索了一种无监督的主题建模方法,该方法结合了LDA算法来发现社交媒体内容中的主题。对拥有90,527条记录的社交媒体数据集进行的经验实验表明,这种方法对于检测主题构面并提取其随时间的动态非常有效。通过对研究数据集的分析,提出的算法根据领域专家的意见准确地发现了五个主要主题。提出的模型相当笼统,可以应用于广泛的领域,以自动从社交媒体渠道中挖掘主题。

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