黏性:基于动态主题模型的意见论坛趋势跟踪

Ignacio Espinoza, Marcelo Mendoza, Pablo Ortega, Daniel Rivera, F. Weiss
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引用次数: 4

摘要

由于越来越多的用户使用Web 2.0平台对品牌和组织发表意见,数以百万计的人在论坛和社交网络上发表意见。对于企业或政府机构来说,几乎不可能跟踪人们所说的话,从而在用户需求/期望和组织行动之间产生差距。为了弥补这一差距,我们创建了Viscovery,这是一个意见总结和趋势跟踪平台,能够分析从论坛中恢复的意见流。为了做到这一点,我们使用动态主题模型,允许发现隐藏在观点背后的主题结构,表征词汇动态。我们扩展了动态主题模型,用于增量学习,这是在粘滞非常中实现模型近实时更新所需的一个关键方面。此外,我们还包括粘度情绪分析,允许在不同粒度级别上分离特定主题的积极/消极词汇。visvisvery允许可视化的代表性意见和术语,在每个主题。在粗粒度级别上,可以使用二维主题嵌入来分析主题的动态,建议纵向主题合并或分割。在本文中,我们报告了开发该平台的经验,分享了在现实世界应用中使用情感分析和主题建模所获得的经验教训和机会。
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Viscovery: Trend Tracking in Opinion Forums based on Dynamic Topic Models
Opinions in forums and social networks are released by millions of people due to the increasing number of users that use Web 2.0 platforms to opine about brands and organizations. For enterprises or government agencies it is almost impossible to track what people say producing a gap between user needs/expectations and organizations actions. To bridge this gap we create Viscovery, a platform for opinion summarization and trend tracking that is able to analyze a stream of opinions recovered from forums. To do this we use dynamic topic models, allowing to uncover the hidden structure of topics behind opinions, characterizing vocabulary dynamics. We extend dynamic topic models for incremental learning, a key aspect needed in Viscovery for model updating in near-real time. In addition, we include in Viscovery sentiment analysis, allowing to separate positive/negative words for a specific topic at different levels of granularity. Viscovery allows to visualize representative opinions and terms in each topic. At a coarse level of granularity, the dynamic of the topics can be analyzed using a 2D topic embedding, suggesting longitudinal topic merging or segmentation. In this paper we report our experience developing this platform, sharing lessons learned and opportunities that arise from the use of sentiment analysis and topic modeling in real world applications.
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