Algorithmic rationality: Epistemology and efficiency in the data sciences

Recently, philosophers and social scientists have turned their attention to the epistemological shifts provoked in established sciences by their incorporation of big data techniques. There has been less focus on the forms of epistemology proper to the investigation of algorithms themselves, understo...

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Main Author: Ian Lowrie
Format: Article
Language:English
Published: SAGE Publishing 2017-03-01
Series:Big Data & Society
Online Access:https://doi.org/10.1177/2053951717700925
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spelling doaj-93effb70f4534657ad16f0769cb774ab2020-11-25T03:23:51ZengSAGE PublishingBig Data & Society2053-95172017-03-01410.1177/205395171770092510.1177_2053951717700925Algorithmic rationality: Epistemology and efficiency in the data sciencesIan LowrieRecently, philosophers and social scientists have turned their attention to the epistemological shifts provoked in established sciences by their incorporation of big data techniques. There has been less focus on the forms of epistemology proper to the investigation of algorithms themselves, understood as scientific objects in their own right. This article, based upon 12 months of ethnographic fieldwork with Russian data scientists, addresses this lack through an investigation of the specific forms of epistemic attention paid to algorithms by data scientists. On the one hand, algorithms are unlike other mathematical objects in that they are not subject to disputation through deductive proof. On the other hand, unlike concrete things in the world such as particles or organisms, algorithms cannot be installed as the objects of experimental systems directly. They can only be evaluated in their functioning as components of extended computational assemblages; on their own, they are inert. As a consequence, the epistemological coding proper to this evaluation does not turn on truth and falsehood but rather on the efficiency of a given algorithmic assemblage. This article suggests that understanding the forms of algorithmic rationality employed in such inquiry is crucial for charting the place of data science within the contemporary academy and knowledge economy more generally.https://doi.org/10.1177/2053951717700925
collection DOAJ
language English
format Article
sources DOAJ
author Ian Lowrie
spellingShingle Ian Lowrie
Algorithmic rationality: Epistemology and efficiency in the data sciences
Big Data & Society
author_facet Ian Lowrie
author_sort Ian Lowrie
title Algorithmic rationality: Epistemology and efficiency in the data sciences
title_short Algorithmic rationality: Epistemology and efficiency in the data sciences
title_full Algorithmic rationality: Epistemology and efficiency in the data sciences
title_fullStr Algorithmic rationality: Epistemology and efficiency in the data sciences
title_full_unstemmed Algorithmic rationality: Epistemology and efficiency in the data sciences
title_sort algorithmic rationality: epistemology and efficiency in the data sciences
publisher SAGE Publishing
series Big Data & Society
issn 2053-9517
publishDate 2017-03-01
description Recently, philosophers and social scientists have turned their attention to the epistemological shifts provoked in established sciences by their incorporation of big data techniques. There has been less focus on the forms of epistemology proper to the investigation of algorithms themselves, understood as scientific objects in their own right. This article, based upon 12 months of ethnographic fieldwork with Russian data scientists, addresses this lack through an investigation of the specific forms of epistemic attention paid to algorithms by data scientists. On the one hand, algorithms are unlike other mathematical objects in that they are not subject to disputation through deductive proof. On the other hand, unlike concrete things in the world such as particles or organisms, algorithms cannot be installed as the objects of experimental systems directly. They can only be evaluated in their functioning as components of extended computational assemblages; on their own, they are inert. As a consequence, the epistemological coding proper to this evaluation does not turn on truth and falsehood but rather on the efficiency of a given algorithmic assemblage. This article suggests that understanding the forms of algorithmic rationality employed in such inquiry is crucial for charting the place of data science within the contemporary academy and knowledge economy more generally.
url https://doi.org/10.1177/2053951717700925
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