IEEE VIS 2024 Content: PUREsuggest: Citation-based Literature Search and Visual Exploration with Keyword-controlled Rankings

PUREsuggest: Citation-based Literature Search and Visual Exploration with Keyword-controlled Rankings

Fabian Beck - University of Bamberg, Bamberg, Germany

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Room: Bayshore I

2024-10-17T13:18:00ZGMT-0600Change your timezone on the schedule page
2024-10-17T13:18:00Z
Exemplar figure, described by caption below
The figure showcases the PUREsuggest interface, a tool designed for citation-based literature search and visual exploration. The interface includes three main components: a list of currently selected publications, a list of suggested publications based on citation links, and a visualization of the citation network. Users can refine searches by adding publications and entering custom keywords to amplify specific research topics, facilitating an interactive and dynamic approach to discovering relevant literature.
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Keywords

Scientific literature search, citation network visualization, visual recommender system.

Abstract

Citations allow quickly identifying related research. If multiple publications are selected as seeds, specific suggestions for related literature can be made based on the number of incoming and outgoing citation links to this selection. Interactively adding recommended publications to the selection refines the next suggestion and incrementally builds a relevant collection of publications. Following this approach, the paper presents a search and foraging approach, PUREsuggest, which combines citation-based suggestions with augmented visualizations of the citation network. The focus and novelty of the approach is, first, the transparency of how the rankings are explained visually and, second, that the process can be steered through user-defined keywords, which reflect topics of interests. The system can be used to build new literature collections, to update and assess existing ones, as well as to use the collected literature for identifying relevant experts in the field. We evaluated the recommendation approach through simulated sessions and performed a user study investigating search strategies and usage patterns supported by the interface.