Litcius/Paper detail

Cartolabe: A Web-Based Scalable Visualization of Large Document Collections

Philippe Caillou, Jonas Renault, Jean‐Daniel Fekete, Anne-Catherine Letournel, Michèle Sébag

2020IEEE Computer Graphics and Applications20 citationsDOIOpen Access PDF

Abstract

We describe Cartolabe, a web-based multiscale system for visualizing and exploring large textual corpora based on topics, introducing a novel mechanism for the progressive visualization of filtering queries. Initially designed to represent and navigate through scientific publications in different disciplines, Cartolabe has evolved to become a generic framework and accommodate various corpora, ranging from Wikipedia (4.5M entries) to the French National Debate (4.3M entries). Cartolabe is made of two modules: The first relies on natural language processing methods, converting a corpus and its entities (documents, authors, and concepts) into high-dimensional vectors, computing their projection on the two-dimensional plane, and extracting meaningful labels for regions of the plane. The second module is a web-based visualization, displaying tiles computed from the multidimensional projection of the corpus using the Umap projection method. This visualization module aims at enabling users with no expertise in visualization and data analysis to get an overview of their corpus, and to interact with it: exploring, querying, filtering, panning, and zooming on regions of semantic interest. Three use cases are discussed to illustrate Cartolabe's versatility and ability to bring large-scale textual corpus visualization and exploration to a wide audience.

Topics & Concepts

Computer scienceVisualizationZoomInformation retrievalPanning (audio)Projection (relational algebra)Data visualizationScalabilityVisual analyticsWorld Wide WebArtificial intelligenceDatabaseLens (geology)AlgorithmPetroleum engineeringEngineeringData Visualization and AnalyticsAdvanced Text Analysis TechniquesNatural Language Processing Techniques