Visualizing Temporal Topic Embeddings with a Compass

Daniel Palamarchuk;Lemara Williams;Brian Mayer;Thomas Danielson;Rebecca Faust;Larry Deschaine;Chris North
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Abstract

Dynamic topic modeling is useful at discovering the development and change in latent topics over time. However, present methodology relies on algorithms that separate document and word representations. This prevents the creation of a meaningful embedding space where changes in word usage and documents can be directly analyzed in a temporal context. This paper proposes an expansion of the compass-aligned temporal Word2Vec methodology into dynamic topic modeling. Such a method allows for the direct comparison of word and document embeddings across time in dynamic topics. This enables the creation of visualizations that incorporate temporal word embeddings within the context of documents into topic visualizations. In experiments against the current state-of-the-art, our proposed method demonstrates overall competitive performance in topic relevancy and diversity across temporal datasets of varying size. Simultaneously, it provides insightful visualizations focused on temporal word embeddings while maintaining the insights provided by global topic evolution, advancing our understanding of how topics evolve over time.
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用指南针可视化时态主题嵌入
动态主题建模有助于发现潜在主题随时间的发展和变化。然而,目前的方法依赖于分离文档和词语表征的算法。这样就无法创建一个有意义的嵌入空间,在这个空间中可以直接分析词的用法和文档在时间上的变化。本文建议将指南针对齐的时态 Word2Vec 方法扩展为动态主题建模。这种方法可以直接比较动态主题中不同时间的词和文档嵌入。这样就能创建可视化的主题,将文档上下文中的时态词嵌入纳入主题可视化中。在与当前最先进技术的对比实验中,我们提出的方法在不同规模的时态数据集的主题相关性和多样性方面表现出了全面的竞争力。同时,它还提供了以时态词嵌入为重点的富有洞察力的可视化,同时保持了全局话题演变所提供的洞察力,从而推进了我们对话题如何随时间演变的理解。
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