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Interaction in Progressive Visual Analytics. An application to progressive sequential pattern mining

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Academic year: 2021

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Figure 2.1: Sense-making loop (D. Keim et al., 2008). Boxes denote containers, while circles are processes that produce an output from an input
Figure 2.3: Knowledge generation process in Visual Analytics (Sacha et al., 2014). Human ac- ac-tions are the blue arrows, which can lead to Visual Analytics components (filled arrows) or to the mappings between them (dotted arrows)
Figure 2.4: The model from Pirolli and Card (2005). Illustration by Pirolli and Card (2005).
Figure 2.5: The task model from Andrienko and Andrienko (2006). Illustration inspired by Aigner, Miksch, Schumann, and Tominski (2011).
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