Guerrilla Badges for Reproducible Geospatial Data Science (AGILE 2019 Short Paper)

This is a Preprint and has not been peer reviewed. This is version 1 of this Preprint.

Add a Comment

You must log in to post a comment.


Comments

Comment #33 Daniel Nüst @ 2021-06-16 15:39

New related work: A Badging System for Reproducibility and Replicability in Remote Sensing Research

https://doi.org/10.1109/JSTARS.2020.3019418

Comment #31 Daniel Nüst @ 2021-06-03 05:44

Longitudinal study on badge effects: Rowhani-Farid A and Barnett AG. Badges for sharing data and code at Biostatistics: an observational study [version 2; peer review: 2 approved]. F1000Research 2018, 7:90 (https://doi.org/10.12688/f1000research.13477.2)

Comment #8 Daniel Nüst @ 2020-12-18 06:01

scite extension uses the same approach (web browser extension) to insert smart citation badges, see https://medium.com/scite/scite-extension-now-inserts-smart-citation-badges-on-many-popular-academic-literature-databases-3670a3acf41c

Downloads

Download Preprint

Supplementary Files
Authors

Daniel Nüst , Lukas Lohoff, Lasse Einfeldt, Nimrod Gavish, Marlena Götza, Shahzeib Tariq Jaswal, Salman Khalid, Laura Meierkort, Matthias Mohr, Clara Rendel

Abstract

The building blocks of research are developing at an unprecedented pace. Data collection, analysis, interpretation, presentation, review, and publication take place completely on computers. The final product often is still a static document with only limited links to the underlying digital material, making transparency and reproducibility a challenge. In this work we apply the mechanism of badges to provide prominent connections to underlying analyses environments and important (meta-)data to readers of scholarly publications in geospatial data science. An API specification and implementation for a badge server provide extended and regular badges. The badges leverage recognition value for executability, licensing, spatial extent, and peer-review metadata – base information which either is or should be made available. We show a client-side integration method across many third-party platforms that allows evaluation of badges in realistic scenarios. The server and client enable an independent spreading of badges. The open source publication of all used software enables reproducibility and extensibility. The badges show potential to enhance interaction with scholarly works and should be evaluated with academic users in the future.

DOI

https://doi.org/10.31223/osf.io/xtsqh

Subjects

Computer Sciences, Earth Sciences, Physical Sciences and Mathematics

Keywords

AGILEGIS, AGILE short paper, reproducibility, reproducible research, badges, data science, geospatial, research compendium

Dates

Published: 2019-06-19 03:56

License

CC BY Attribution 4.0 International