trackr: A Framework for Enhancing Discoverability and Reproducibility of Data Visualizations and Other Artifacts in R

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Abstract

Research is an incremental, iterative process, with new results relying and building upon previous ones. Scientists need to find, retrieve, understand, and verify results to confidently extend them, even when the results are their own. We present the trackr framework for organizing, automatically annotating, discovering, and retrieving results. We identify sources of automatically extractable metadata for computational results, and we define an extensible system for organizing, annotating, and searching for results based on these and other metadata. We present an open-source implementation of these concepts for plots, computational artifacts, and woven dynamic reports generated in the R statistical computing language. Supplementary materials for this article are available online.

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Becker, G., Moore, S. E., & Lawrence, M. (2019). trackr: A Framework for Enhancing Discoverability and Reproducibility of Data Visualizations and Other Artifacts in R. Journal of Computational and Graphical Statistics, 28(3), 644–658. https://doi.org/10.1080/10618600.2019.1585259

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