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Systematizing Confidence in Open Research and Evidence (SCORE)

Author

Listed:
  • Alipourfard, Nazanin
  • Arendt, Beatrix

    (Center for Open Science)

  • Benjamin, Daniel Jacob
  • Benkler, Noam

    (Smart Information Flow Technologies)

  • Bishop, Michael Metcalf

    (KeyW)

  • Burstein, Mark
  • Bush, Martin
  • Caverlee, James
  • Chen, Yiling
  • Clark, Chae

Abstract

Assessing the credibility of research claims is a central, continuous, and laborious part of the scientific process. Credibility assessment strategies range from expert judgment to aggregating existing evidence to systematic replication efforts. Such assessments can require substantial time and effort. Research progress could be accelerated if there were rapid, scalable, accurate credibility indicators to guide attention and resource allocation for further assessment. The SCORE program is creating and validating algorithms to provide confidence scores for research claims at scale. To investigate the viability of scalable tools, teams are creating: a database of claims from papers in the social and behavioral sciences; expert and machine generated estimates of credibility; and, evidence of reproducibility, robustness, and replicability to validate the estimates. Beyond the primary research objective, the data and artifacts generated from this program will be openly shared and provide an unprecedented opportunity to examine research credibility and evidence.

Suggested Citation

  • Alipourfard, Nazanin & Arendt, Beatrix & Benjamin, Daniel Jacob & Benkler, Noam & Bishop, Michael Metcalf & Burstein, Mark & Bush, Martin & Caverlee, James & Chen, Yiling & Clark, Chae, 2021. "Systematizing Confidence in Open Research and Evidence (SCORE)," SocArXiv 46mnb, Center for Open Science.
  • Handle: RePEc:osf:socarx:46mnb
    DOI: 10.31219/osf.io/46mnb
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    References listed on IDEAS

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    Cited by:

    1. Muradchanian, Jasmine & Hoekstra, Rink & Kiers, Henk & van Ravenzwaaij, Don, 2023. "Evaluating meta-analysis as a replication success measure," MetaArXiv ax825, Center for Open Science.

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