Algorithmic regulation: a critical interrogation

Research output: Contribution to journalArticle

Authors

Colleges, School and Institutes

Abstract

Innovations in networked digital communications technologies, including the rise of ‘Big Data’, ubiquitous computing and cloud storage systems, may be giving rise to a new system of social ordering known as algorithmic regulation. Algorithmic regulation refers to decision-making systems that regulate a domain of activity in order to manage risk or alter behaviour through continual computational generation of knowledge by systematically collecting data (in real time on a continuous basis) emitted directly from numerous dynamic components pertaining to the regulated environment in order to identify and, if necessary, automatically refine (or prompt refinement of) the system’s operations to attain a pre-specified goal. It provides a descriptive analysis of algorithmic regulation, classifying these decision-making systems as either reactive or pre-emptive, and offers a taxonomy that identifies 8 different forms of algorithmic regulation based on their configuration at each of the three stages of the cybernetic process: notably, at the level of standard setting (adaptive vs fixed behavioural standards); information-gathering and monitoring (historic data vs predictions based on inferred data) and at the level of sanction and behavioural change (automatic execution vs recommender systems). It maps the contours of several emerging debates surrounding algorithmic regulation, drawing upon insights from regulatory governance studies, legal critiques , surveillance studies and critical data studies to highlight various concerns about the legitimacy of algorithmic regulation

Details

Original languageEnglish
Pages (from-to)505-523
JournalRegulation & Governance
Volume12
Issue number4
Early online date31 Jul 2017
Publication statusPublished - Dec 2018

Keywords

  • big data, algorithm, surveillance, enforcement, automation