The practices and politics of machine learning: a field guide for analyzing artificial intelligence

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Název: The practices and politics of machine learning: a field guide for analyzing artificial intelligence
Autoři: Lee, Francis, 1974
Zdroj: AI & Society. 40(8):6135-6148
Témata: Algorithmic assemblages, Critical AI studies, Data practices, Machine learning ethnography, Moments of translation, Science and technology studies, Clustering algorithms, Learning algorithms, Learning systems, Machine learning, Algorithm study, Algorithmic assemblage, Algorithmics, Critical AI study, Machine learning systems, Machine-learning, Moment of translation, Vector spaces
Popis: This article develops an analytical and methodological field guide for studying the mundane practices that constitute machine learning systems. Drawing on science and technology studies (STS), I move beyond the opacity/transparency dichotomy that has dominated critical algorithm studies to examine how machine learning is assembled through everyday work. Rather than treating algorithms as black boxes or magical entities, I focus on four empirical moments of translation—feature extraction, vectorization, clustering, and data drift—where technical work becomes political choice. By ethnographically attending to practitioners' tinkering, negotiations, and valuation practices in these moments, we can trace how classification systems are constructed and stabilized. This approach allows us to ask: How are particular features of the world selected as relevant for prediction? Through what practices are people and phenomena translated into mathematical vector spaces? How are temporal assumptions encoded in data? By studying these mundane processes of construction, we can understand how machine learning systems enact particular ways of seeing, classifying, and predicting the world. This field guide thus contributes methodological tools for analyzing how the politics of machine learning is assembled in practice, opening analytical space for critical engagement beyond calls for transparency or fairness.
Popis souboru: print
Přístupová URL adresa: https://urn.kb.se/resolve?urn=urn:nbn:se:sh:diva-57764
https://doi.org/10.1007/s00146-025-02430-7
Databáze: SwePub
Popis
Abstrakt:This article develops an analytical and methodological field guide for studying the mundane practices that constitute machine learning systems. Drawing on science and technology studies (STS), I move beyond the opacity/transparency dichotomy that has dominated critical algorithm studies to examine how machine learning is assembled through everyday work. Rather than treating algorithms as black boxes or magical entities, I focus on four empirical moments of translation—feature extraction, vectorization, clustering, and data drift—where technical work becomes political choice. By ethnographically attending to practitioners' tinkering, negotiations, and valuation practices in these moments, we can trace how classification systems are constructed and stabilized. This approach allows us to ask: How are particular features of the world selected as relevant for prediction? Through what practices are people and phenomena translated into mathematical vector spaces? How are temporal assumptions encoded in data? By studying these mundane processes of construction, we can understand how machine learning systems enact particular ways of seeing, classifying, and predicting the world. This field guide thus contributes methodological tools for analyzing how the politics of machine learning is assembled in practice, opening analytical space for critical engagement beyond calls for transparency or fairness.
ISSN:09515666
14355655
DOI:10.1007/s00146-025-02430-7