Dados Bibliográficos

AUTOR(ES) Jérémy Grosman , Tyler Reigeluth
AFILIAÇÃO(ÕES) Université de Namur, Research Center in Information, Law and Society (CRIDS), Belgium, Université Libre de Bruxelles, Centre de Théorie Politique, Belgium
ANO 2019
TIPO Artigo
PERIÓDICO Big Data & Society
ISSN 2053-9517
E-ISSN 2053-9517
DOI 10.1177/2053951719858742
CITAÇÕES 11
ADICIONADO EM 2025-08-18
MD5 60e3583e518cd589b833d33940b4f8aa

Resumo

This contribution aims at proposing a framework for articulating different kinds of 'normativities' that are and can be attributed to 'algorithmic systems.' The technical normativity manifests itself through the lineage of technical objects. The norm expresses a technical scheme's becoming as it mutates through, but also resists, inventions. The genealogy of neural networks shall provide a powerful illustration of this dynamic by engaging with their concrete functioning as well as their unsuspected potentialities. The socio-technical normativity accounts for the manners in which engineers, as actors folded into socio-technical networks, willingly or unwittingly, infuse technical objects with values materialized in the system. Surveillance systems' design will serve here to instantiate the ongoing mediation through which algorithmic systems are endowed with specific capacities. The behavioral normativity is the normative activity, in which both organic and mechanical behaviors are actively participating, undoing the identification of machines with 'norm following,' and organisms with 'norminstitution'. This proposition productively accounts for the singularity of machine learning algorithms, explored here through the case of recommender systems. The paper will provide substantial discussions of the notions of 'normative' by cutting across history and philosophy of science, legal, and critical theory, as well as 'algorithmics,' and by confronting our studies led in engineering laboratories with critical algorithm studies.

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