Weston, Sara J.Shryock, IanLight, RyanFisher, Phillip A.2023-10-242023-10-242023-05-25Weston SJ, Shryock I, Light R, Fisher PA. Selecting the Number and Labels of Topics in Topic Modeling: A Tutorial. Advances in Methods and Practices in Psychological Science. 2023;6(2). doi:10.1177/25152459231160105https://doi.org/10.1177/25152459231160105https://hdl.handle.net/1794/2901713 pagesTopic modeling is a type of text analysis that identifies clusters of co-occurring words, or latent topics. A challenging step of topic modeling is determining the number of topics to extract. This tutorial describes tools researchers can use to identify the number and labels of topics in topic modeling. First, we outline the procedure for narrowing down a large range of models to a select number of candidate models. This procedure involves comparing the large set on fit metrics, including exclusivity, residuals, variational lower bound, and semantic coherence. Next, we describe the comparison of a small number of models using project goals as a guide and information about topic representative and solution congruence. Finally, we describe tools for labeling topics, including frequent and exclusive words, key examples, and correlations among topics.enCreative Commons BY-NC-ND 4.0-USChildDevelopmentHealthInfantNatural language processingTopic modelingStructural topic modelingSelecting the Number and Labels of Topics in Topic Modeling: A TutorialArticle