Pérez-Messina, I., Angelini, M., Ceneda, D., Tominski, C., & Miksch, S. (2025). Coupling Guidance and Progressiveness in Visual Analytics. Computer Graphics Forum, 44(3), Article e70115. https://doi.org/10.1111/cgf.70115
E193-07 - Forschungsbereich Visual Analytics E056-18 - Fachbereich Visual Analytics and Computer Vision Meet Cultural Heritage
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Journal:
Computer Graphics Forum
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ISSN:
0167-7055
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Date (published):
Jun-2025
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Number of Pages:
12
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Publisher:
WILEY
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Peer reviewed:
Yes
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Keywords:
CCS Concepts; Visualization design and evaluation methods; Human-centered computing → Visualization theory, concepts and paradigms
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Abstract:
Data size and complexity in Visual Analytics (VA)pose significant challenges for VA systems andVA users. Two recent developments address these challenges: progressive VA (PVA) and guidance for VA (GVA). Both share the goal of supporting the analysis flow. PVA primarily considers the system perspective and incrementally generates partial results during long computations to avoid an unresponsive VA system. GVA is primarily concerned with the user perspective and strives to mitigate knowledge gaps during VA activities to prevent the analysis from stalling. Although PVA and GVA share the same goal, it has not yet been studied how PVA and GVA can join forces to achieve it. Our paper investigates this in detail. We structure our research around two questions: How can guidance enhance PVA and how can progressiveness enhance GVA? This leads to two main themes: Guidance for Progressiveness (G4P) and Progressiveness for Guidance (P4G). By exploring both themes, we arrive at a conceptual model of how progressiveness and guidance can work together. We illustrate the practical value of our theoretical considerations in two case studies of G4P and P4G.
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Project title:
Guidance-Enriched Visual Analytics for Temporal Data: ICT19-47 (WWTF Wiener Wissenschafts-, Forschu und Technologiefonds) Wissensunterstützte Visual Analytics: P 31419-N31 (FWF - Österr. Wissenschaftsfonds) Domain-adaptive Remote sensing Image Analysis with Human-in-the-loop: 880883 (FFG - Österr. Forschungsförderungs- gesellschaft mbH)
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Project (external):
MUR PRIN 2022
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Project ID:
202248FWFS
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Research Areas:
Visual Computing and Human-Centered Technology: 100%