Dados Bibliográficos

AUTOR(ES) M. Molina , F. Garip
AFILIAÇÃO(ÕES) Cornell University School of Industrial and Labor Relations
ANO 2019
TIPO Artigo
PERIÓDICO Annual Review of Sociology
ISSN 0360-0572
E-ISSN 1545-2115
EDITORA Annual Reviews Inc.
DOI 10.1146/annurev-soc-073117-041106
CITAÇÕES 37
ADICIONADO EM 2025-08-18
MD5 76a12327cae074098800be90320e5047

Resumo

Machine learning is a field at the intersection of statistics and computer science that uses algorithms to extract information and knowledge from data. Its applications increasingly find their way into economics, political science, and sociology. We offer a brief introduction to this vast toolbox and illustrate its current uses in the social sciences, including distilling measures from new data sources, such as text and images; characterizing population heterogeneity; improving causal inference; and offering predictions to aid policy decisions and theory development. We argue that, in addition to serving similar purposes in sociology, machine learning tools can speak to long-standing questions on the limitations of the linear modeling framework, the criteria for evaluating empirical findings, transparency around the context of discovery, and the epistemological core of the discipline.

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