Inside Algorithmic Bureaucracy: Disentangling Automated Decision-making and Good Administration

Ulrik Roehl*, Joep Crompvoets

*Corresponding author for this work

Research output: Contribution to journalJournal articleResearchpeer-review

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Abstract

Public administrative bodies around the world are increasingly applying automated, administrative decision-making as underlying technologies such as machine learning mature. Such decision-making is a central element of emerging forms of algorithmic bureaucracies. With its direct exercise of public authority over individual citizens and firms, automated, administrative decision-making makes it particularly important to consider relations to values of good administration. Based on a multiple case-study, the article focuses on how empirical use of automated decision-making influences and transforms issues of good administration in four policy areas in Denmark: Business and social policy; labour market policy; agricultural policy; and tax policy. Supplementing emerging literature, the article exemplifies how public authorities struggle to apply automated decision-making in ways that support rather than undermine good administration. We identify six empirical relations of usage of automated, administrative decision-making and good administration: (I) Giving accurate and comprehensible reasons; (II) Informing addressees’ expectations; (III) Combining material and algorithmic expertise; (IV) Achieving effective oversight; (V) Continuously ensuring quality; and (VI) Managing high complexity. Additionally, we pinpoint related key capabilities for administrative bodies in order to support good administration.
Original languageEnglish
JournalPublic Policy and Administration
Volume40
Issue number2
Pages (from-to)322-350
Number of pages29
ISSN0952-0767
DOIs
Publication statusPublished - Apr 2025

Bibliographical note

Published online: 31 August 2023.

Keywords

  • Administrative capabilities
  • Administrative decisions
  • Algorithmic bureaucracy
  • Automated decision-making
  • Good administration
  • Multiple case-study

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