The role of metadata in reproducible computational research

Research output: Working paper

  • External authors:
  • Jeremy Leipzig
  • Daniel Nüst
  • Charles Tapley Hoyt
  • Karthik Ram
  • Jane Greenberg

Abstract

Reproducible computational research (RCR) is the keystone of the scientific method for in silico analyses, packaging the transformation of raw data to published results. In addition to its role in research integrity, RCR has the capacity to significantly accelerate evaluation and reuse. This potential and wide-support for the FAIR principles have motivated interest in metadata standards supporting RCR. Metadata provides context and provenance to raw data and methods and is essential to both discovery and validation. Despite this shared connection with scientific data, few studies have explicitly described the relationship between metadata and RCR. This article employs a functional content analysis to identify metadata standards that support RCR functions across an analytic stack consisting of input data, tools, notebooks, pipelines, and publications. Our article provides background context, explores gaps, and discovers component trends of embeddedness and methodology weight from which we derive recommendations for future work.

Bibliographical metadata

Original languageUndefined
Number of pages59
Publication statusPublished - 15 Jun 2020