Litcius/Paper detail

The epistemological foundations of data science: a critical review

Jules Desai, David Watson, Vincent Wang, Mariarosaria Taddeo, Luciano Floridi

2022Synthese32 citationsDOIOpen Access PDF

Abstract

Abstract The modern abundance and prominence of data have led to the development of “data science” as a new field of enquiry, along with a body of epistemological reflections upon its foundations, methods, and consequences. This article provides a systematic analysis and critical review of significant open problems and debates in the epistemology of data science. We propose a partition of the epistemology of data science into the following five domains: (i) the constitution of data science; (ii) the kind of enquiry that it identifies; (iii) the kinds of knowledge that data science generates; (iv) the nature and epistemological significance of “black box” problems; and (v) the relationship between data science and the philosophy of science more generally.

Topics & Concepts

Philosophy of scienceEpistemologyPhilosophy of languageMetaphysicsField (mathematics)Science studiesSocial epistemologySociologyPhilosophyMathematicsPure mathematicsExplainable Artificial Intelligence (XAI)Ethics and Social Impacts of AIPhilosophy and History of Science