利用 MetaMap 在 Twitter 上实现语义主题建模。

Rebecca Shyu, Chunhua Weng
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引用次数: 0

摘要

主题建模在短语或短句以及不断变化的俚语方面表现不佳,而这些在社交媒体(如 X,前身为 Twitter)中很常见。本研究探讨了 MetaMap 等概念注释工具能否在语义层面上实现主题建模。以提及 "羟氯喹 "的推文为案例,我们提取了在 2020 年 1 月 3 日至 2021 年 1 月 12 日期间发布的 56017 条推文。这些推文通过 MetaMap 以 UMLS Concept Unique Identifiers (CUI) 对概念进行编码,然后我们使用 Latent Dirichlet Allocation (LDA) 为两个数据集确定最佳模型:1)带有原始文本的推文;2)带有替换 CUI 的推文。我们发现,MetaMap LDA模型在一致性和代表性方面优于非MetaMap模型,并能及时识别与社会和政治讨论相关的话题。我们的结论是,通过 UMLS 概念整合 MetaMap 来标准化推文,可以在文本噪声中提高语义主题建模性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enabling Semantic Topic Modeling on Twitter Using MetaMap.

Topic modeling performs poorly on short phrases or sentences and ever-changing slang, which are common in social media, such as X, formerly known as Twitter. This study investigates whether concept annotation tools such as MetaMap can enable topic modeling at the semantic level. Using tweets mentioning "hydroxychloroquine" for a case study, we extracted 56,017 posted between 03/01/2020-12/31/2021. The tweets were run through MetaMap to encode concepts with UMLS Concept Unique Identifiers (CUIs) and then we used Latent Dirichlet Allocation (LDA) to identify the optimal model for two datasets: 1) tweets with the original text and 2) tweets with the replaced CUIs. We found that the MetaMap LDA models outperformed the non-MetaMap models in terms of coherence and representativeness and identified topics timely relevant to social and political discussions. We concluded that integrating MetaMap to standardize tweets through UMLS concepts improved semantic topic modeling performance amidst noise in the text.

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