捕捉社交媒体内容的变化:一个多潜在变化点主题模型

Mark. Sci. Pub Date : 2020-03-09 DOI:10.1287/mksc.2019.1212
Ning Zhong, David A. Schweidel
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引用次数: 42

摘要

尽管社交媒体已经成为研究人员和从业人员的流行见解来源,但关于社交媒体动态的大部分工作都集中在诸如数量和情绪等常见指标上。在这项研究中,我们开发了一个变化点模型来捕捉社交媒体内容的潜在变化。我们扩展了潜在狄利克雷分配(LDA),这是一种主题建模方法,通过狄利克雷过程隐马尔可夫模型合并多个潜在变化点,该模型允许主题的流行程度在每个变化点之前和之后不同,而无需事先了解变化点的数量。我们使用社交媒体上发布的品牌危机(大众汽车2015年的排放测试丑闻和安德玛2018年的数据泄露)和新产品发布(汉堡王2016年推出的最愤怒的皇堡)来展示我们的建模框架。我们表明,我们的模型可以识别围绕这些事件的对话中的变化,并且优于静态和其他动态主题模型。我们展示了营销人员如何使用该模型来积极监控围绕其品牌的对话,包括区分由贡献者基础的转变引起的对话变化和贡献者讨论的主题的潜在变化。
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Capturing Changes in Social Media Content: A Multiple Latent Changepoint Topic Model
Although social media has emerged as a popular source of insights for both researchers and practitioners, much of the work on the dynamics in social media has focused on common metrics such as volume and sentiment. In this research, we develop a changepoint model to capture the underlying shifts in social media content. We extend latent Dirichlet allocation (LDA), a topic modeling approach, by incorporating multiple latent changepoints through a Dirichlet process hidden Markov model that allows for the prevalence of topics to differ before and after each changepoint without requiring prior knowledge about the number of changepoints. We demonstrate our modeling framework using social media posts from brand crises (Volkswagen’s 2015 emissions testing scandal and Under Armour’s 2018 data breach) and a new product launch (Burger King’s 2016 launch of the Angriest Whopper). We show that our model identifies shifts in the conversation surrounding each of these events and outperforms both static and other dynamic topic models. We demonstrate how the model may be used by marketers to actively monitor conversations around their brands, including distinguishing between changes in the conversation arising from a shift in the contributor base and underlying changes in the topics discussed by contributors.
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