计算机科学
客观性(哲学)
主题模型
可扩展性
数据科学
概率逻辑
口译(哲学)
事后
实证研究
情报检索
人工智能
数据库
认识论
哲学
牙科
程序设计语言
医学
作者
Shusei Eshima,Kosuke Imai,Tomoya Sasaki
摘要
Abstract In recent years, fully automated content analysis based on probabilistic topic models has become popular among social scientists because of their scalability. However, researchers find that these models often fail to measure specific concepts of substantive interest by inadvertently creating multiple topics with similar content and combining distinct themes into a single topic. In this article, we empirically demonstrate that providing a small number of keywords can substantially enhance the measurement performance of topic models. An important advantage of the proposed keyword‐assisted topic model (keyATM) is that the specification of keywords requires researchers to label topics prior to fitting a model to the data. This contrasts with a widespread practice of post hoc topic interpretation and adjustments that compromises the objectivity of empirical findings. In our application, we find that keyATM provides more interpretable results, has better document classification performance, and is less sensitive to the number of topics.
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