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Visually Guided Extraction of Prevalent Topics
Linnaeus University, Faculty of Technology, Department of computer science and media technology (CM). (ISOVIS, DISA)ORCID iD: 0000-0001-6150-0787
Linnaeus University, Faculty of Technology, Department of computer science and media technology (CM). Blekinge Institute of Technology, Sweden.ORCID iD: 0000-0001-6745-4398
Linköping University, Sweden.ORCID iD: 0000-0002-1907-7820
Linnaeus University, Faculty of Technology, Department of computer science and media technology (CM). Linköping University, Sweden. (ISOVIS, DISA)ORCID iD: 0000-0002-0519-2537
2025 (English)In: Information Visualization, ISSN 1473-8716, E-ISSN 1473-8724, Vol. 42, no 2, p. 179-198Article in journal (Refereed) Published
Abstract [en]

The sensemaking process of large sets of text documents is highly challenging for tasks such as obtaining a comprehensive overview or keeping up with the most important trends and topics. Even though several established methods for condensation and summarization of large text corpora exist, many of them lack the ability to account for difference in prevalence between identified topics, which in turn impedes quantitative analysis. In this paper, we therefore propose a novel prevalence-aware method for topic extraction, and show how it can be used to obtain important insights from two text corpora with very different content. We also implemented a prototype visual analytics tool which guides the user in the search for relevant insights and promotes trust in the yielded results. We have verified our application by a user study, as well as by a validation run on a data set with previously known topic structure. The results clearly show that our approach is suitable for text mining, that is can be used by non-experts, and that it offers features which makes it an interesting candidate for use in several different analyze scenarios.

Place, publisher, year, edition, pages
SAGE Publications , 2025. Vol. 42, no 2, p. 179-198
Keywords [en]
Visual Analytics, Text Mining, Text Embedding, Topic Modelling, Similarity Calculations
National Category
Computer Sciences Human Computer Interaction
Research subject
Computer Science, Information and software visualization
Identifiers
URN: urn:nbn:se:lnu:diva-136101DOI: 10.1177/14738716241312400ISI: 001408697200001Scopus ID: 2-s2.0-85216198128OAI: oai:DiVA.org:lnu-136101DiVA, id: diva2:1935944
Funder
ELLIIT - The Linköping‐Lund Initiative on IT and Mobile Communications
Note

This work was partially supported through the ELLIIT environment for strategic research in Sweden. The work of Ilir Jusufi was supported in part by the Knowledge Foundation, Sweden, through the project ”Rekryteringar 21, Universitetslektor i spelteknik” under Contract 20210077.

Available from: 2025-02-09 Created: 2025-02-09 Last updated: 2025-05-28Bibliographically approved
In thesis
1. Using Multiple Embeddings for Visually Guided Text Similarity Analysis
Open this publication in new window or tab >>Using Multiple Embeddings for Visually Guided Text Similarity Analysis
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Making sense of large sets of data is a general and important challenge that occurs for many research fields and real-world scenarios. Therefore, many different specific computational methods for data mining and analysis have been developed, some which are specific to certain data types and some which are more general. Such methods often seek to reveal the intrinsic structure of relations between the data items in order to provide important insights beyond the individual data values. This can be done in many different ways, but interestingly several of the most prominent methods (such as clustering and dimensionality reduction) are based on similarity/closeness calculations. The concept of similarity may at first glance seem both intuitive and simple, but it provides several challenges conceptually, visually and computationally due to its inherently subjective nature.

Given the prevalence of similarity-based analysis methods within visual analytics (VA), we argue that there is a need for a better understanding of the potential and limitations of such methods---not only in their own specific contexts, but rather on a more common and general level. With this in mind, we have identified a current research gap regarding the need for a comprehensive approach on how to evaluate, compare and combine different models within the context of similarity calculations. In this thesis, we seek to fill this gap through a series of publications around the common thread of developing a coherent VA framework for similarity-based analysis of large textual data sets. Although we have founded our work on embedding-based similarity calculations on textual data, many of the general ideas and implications are generalizable to other computational approaches and data types as well.

Our work covers several important aspects of the problem area, each of which is needed in order to construct a comprehensive methodology framework. As a foundation for our work, and for positioning our contribution in the context of the current research frontier, we provide a comprehensive survey of the use of embeddings within VA applications. For a solid conceptual understanding of the concept of similarity, we provide an analysis of its inherently subjective nature and the challenges this entails. Computationally, we develop several new methods for evaluating, comparing and combining different models. As a direct result of this, we also uncover a surprisingly high level of model disagreement---even though only state-of-the-art models are used. Visually, we provide several new prototype VA tools aimed at including the analyst in the loop and promote trust and deep understanding. All in all, our work provides several new and important insights to a previously underresearched problem area.

Place, publisher, year, edition, pages
Linnaeus University Press, 2025
Keywords
Embeddings, Similarity Calculations, Visual Analytics, Text Mining
National Category
Computer and Information Sciences
Identifiers
urn:nbn:se:lnu:diva-138916 (URN)10.15626/LUD.571.2025 (DOI)9789180822985 (ISBN)978-91-8082-299-2 (ISBN)
Public defence
2025-06-12, Newton, hus C, Växjö, 09:30 (English)
Opponent
Available from: 2025-06-02 Created: 2025-05-28 Last updated: 2025-06-02Bibliographically approved

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Witschard, DanielJusufi, IlirKucher, KostiantynKerren, Andreas

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