Krause, CedricRieger, JonasFlossdorf, JonathanJentsch, CarstenBeck, FabianGuthe, MichaelGrosch, Thorsten2023-09-252023-09-252023978-3-03868-232-5https://doi.org/10.2312/vmv.20231231https://diglib.eg.org:443/handle/10.2312/vmv20231231Texts are collected over time and reflect temporal changes in the themes that they cover. While some changes might slowly evolve, other changes abruptly surface as explicit change points. In an application study for a change point extraction method based on a rolling Latent Dirichlet Allocation (LDA), we have developed a visualization approach that allows exploring such change points and related change patterns. Our visualization not only provides an overview of topics, but supports the detailed exploration of temporal developments. The interplay of general topic contents, development, and similarities with detected change points reveals rich insights into different kinds of change patterns. The approach comprises a combination of views including topic timeline representations with detected change points, comparative word clouds, and temporal similarity matrices. In an interactive exploration, these views adapt to selected topics, words, or points in time. We demonstrate the use cases of our approach in an in-depth application example involving statisticians.Attribution 4.0 International LicenseCCS Concepts: Human-centered computing → Visual analytics; Mathematics of computing → Time series analysisHumancentered computing → Visual analyticsMathematics of computing → Time series analysisVisually Analyzing Topic Change Points in Temporal Text Collections10.2312/vmv.2023123197-1059 pages