Litcius/Paper detail

Scim: Intelligent Skimming Support for Scientific Papers

Raymond Fok, Hita Kambhamettu, Luca Soldaini, Jonathan Bragg, Kyle Lo, Marti A. Hearst, Andrew Head, Daniel S. Weld

202336 citationsDOIOpen Access PDF

Abstract

Scholars need to keep up with an exponentially increasing flood of scientific papers. To aid this challenge, we introduce Scim, a novel intelligent interface that helps experienced researchers skim – or rapidly review – a paper to attain a cursory understanding of its contents. Scim supports the skimming process by highlighting salient paper contents in order to direct a reader’s attention. The system’s highlights are faceted by content type, evenly distributed across a paper, and have a density configurable by readers at both the global and local level. We evaluate Scim with both an in-lab usability study and a longitudinal diary study, revealing how its highlights facilitate the more efficient construction of a conceptualization of a paper. We conclude by discussing design considerations and tensions for the design of future intelligent skimming tools.

Topics & Concepts

ConceptualizationComputer scienceUsabilitySalientProcess (computing)Order (exchange)Interface (matter)Data scienceHuman–computer interactionArtificial intelligenceBusinessMaximum bubble pressure methodOperating systemBubbleFinanceParallel computingWeb Data Mining and AnalysisAdvanced Text Analysis TechniquesInformation Retrieval and Search Behavior
Scim: Intelligent Skimming Support for Scientific Papers | Litcius