Visual augmentation of source code editors: A systematic mapping study
April 05, 2018 Β· Declared Dead Β· π Journal of Visual Languages and Computing
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Authors
MatΓΊΕ‘ SulΓr, Michaela BaΔΓkovΓ‘, Sergej Chodarev, Jaroslav PorubΓ€n
arXiv ID
1804.02074
Category
cs.SE: Software Engineering
Cross-listed
cs.PL
Citations
35
Venue
Journal of Visual Languages and Computing
Last Checked
4 months ago
Abstract
Source code written in textual programming languages is typically edited in integrated development environments or specialized code editors. These tools often display various visual items, such as icons, color highlights or more advanced graphical overlays directly in the main editable source code view. We call such visualizations source code editor augmentation. In this paper, we present a first systematic mapping study of source code editor augmentation tools and approaches. We manually reviewed the metadata of 5,553 articles published during the last twenty years in two phases -- keyword search and references search. The result is a list of 103 relevant articles and a taxonomy of source code editor augmentation tools with seven dimensions, which we used to categorize the resulting list of the surveyed articles. We also provide the definition of the term source code editor augmentation, along with a brief overview of historical development and augmentations available in current industrial IDEs.
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