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Rita Borgo

Researcher at King's College London

Publications -  65
Citations -  1232

Rita Borgo is an academic researcher from King's College London. The author has contributed to research in topics: Visualization & Computer science. The author has an hindex of 17, co-authored 53 publications receiving 936 citations. Previous affiliations of Rita Borgo include University of Leeds & Istituto di Scienza e Tecnologie dell'Informazione.

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Proceedings ArticleDOI

Glyph-based Visualization: Foundations, Design Guidelines, Techniques and Applications

TL;DR: This report fills several major gaps in the literature, drawing the link between the fundamental concepts in semiotics and the broad spectrum of glyph-based visualization, reviewing existing design guidelines and implementation techniques, and surveying the use of glyphs in many applications.
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An Empirical Study on Using Visual Embellishments in Visualization

TL;DR: The results of this study show that visual embellishments can help participants better remember the information depicted in visualization, and can have a negative impact on the speed of visual search.
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Storytelling and Visualization: An Extended Survey

TL;DR: This paper presents a survey of storytelling literature in visualization and presents an overview of the common and important elements in storytelling visualization, as well as a novel classification of the literature on storytelling in visualization.
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Information Visualization Evaluation Using Crowdsourcing

TL;DR: A review of the use of crowdsourcing for evaluation in visualization research, which analyzed 190 crowdsourcing experiments reported in 82 papers that were published in major visualization conferences and journals between 2006 and 2017.
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TimeNotes: A Study on Effective Chart Visualization and Interaction Techniques for Time-Series Data

TL;DR: This paper comparatively evaluates existing methods, such as Stack Zoom and ChronoLenses, giving a graphical overview of each and classifying their ability to explore and interact with data, and proposes new visualizations and other extensions to the existing approaches.