Data Science Journal (Mar 2020)

Risk Assessment for Scientific Data

  • Matthew S. Mayernik,
  • Kelsey Breseman,
  • Robert R. Downs,
  • Ruth Duerr,
  • Alexis Garretson,
  • Chung-Yi (Sophie) Hou,
  • Environmental Data Governance Initiative (EDGI) and Earth Science Information Partners (ESIP) Data Stewardship Committee

DOI
https://doi.org/10.5334/dsj-2020-010
Journal volume & issue
Vol. 19, no. 1

Abstract

Read online

Ongoing stewardship is required to keep data collections and archives in existence. Scientific data collections may face a range of risk factors that could hinder, constrain, or limit current or future data use. Identifying such risk factors to data use is a key step in preventing or minimizing data loss. This paper presents an analysis of data risk factors that scientific data collections may face, and a data risk assessment matrix to support data risk assessments to help ameliorate those risks. The goals of this work are to inform and enable effective data risk assessment by: a) individuals and organizations who manage data collections, and b) individuals and organizations who want to help to reduce the risks associated with data preservation and stewardship. The data risk assessment framework presented in this paper provides a platform from which risk assessments can begin, and a reference point for discussions of data stewardship resource allocations and priorities.

Keywords