Scientific Data (Feb 2021)

The Zoltar forecast archive, a tool to standardize and store interdisciplinary prediction research

  • Nicholas G. Reich,
  • Matthew Cornell,
  • Evan L. Ray,
  • Katie House,
  • Khoa Le

DOI
https://doi.org/10.1038/s41597-021-00839-5
Journal volume & issue
Vol. 8, no. 1
pp. 1 – 11

Abstract

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Abstract Forecasting has emerged as an important component of informed, data-driven decision-making in a wide array of fields. We introduce a new data model for probabilistic predictions that encompasses a wide range of forecasting settings. This framework clearly defines the constituent parts of a probabilistic forecast and proposes one approach for representing these data elements. The data model is implemented in Zoltar, a new software application that stores forecasts using the data model and provides standardized API access to the data. In one real-time case study, an instance of the Zoltar web application was used to store, provide access to, and evaluate real-time forecast data on the order of 108 rows, provided by over 40 international research teams from academia and industry making forecasts of the COVID-19 outbreak in the US. Tools and data infrastructure for probabilistic forecasts, such as those introduced here, will play an increasingly important role in ensuring that future forecasting research adheres to a strict set of rigorous and reproducible standards.