Redirigiendo al acceso original de articulo en 16 segundos...
Inicio  /  Information  /  Vol: 13 Par: 1 (2022)  /  Artículo
ARTÍCULO
TITULO

Interfaces for Searching and Triaging Large Document Sets: An Ontology-Supported Visual Analytics Approach

Jonathan Demelo and Kamran Sedig    

Resumen

We investigate the design of ontology-supported, progressively disclosed visual analytics interfaces for searching and triaging large document sets. The goal is to distill a set of criteria that can help guide the design of such systems. We begin with a background of information search, triage, machine learning, and ontologies. We review research on the multi-stage information-seeking process to distill the criteria. To demonstrate their utility, we apply the criteria to the design of a prototype visual analytics interface: VisualQUEST (Visual interface for QUEry, Search, and Triage). VisualQUEST allows users to plug-and-play document sets and expert-defined ontology files within a domain-independent environment for multi-stage information search and triage tasks. We describe VisualQUEST through a functional workflow and culminate with a discussion of ongoing formative evaluations, limitations, future work, and summary.

 Artículos similares