Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science

Research at the intersection of machine learning and the social sciences has provided critical new insights into social behavior. At the same time, a variety of issues have been identified with the machine learning models used to analyze social data. These issues range from technical problems with t...

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Main Authors: Jason Radford, Kenneth Joseph
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-05-01
Series:Frontiers in Big Data
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fdata.2020.00018/full
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spelling doaj-8b5fcfc91c58415582baf3135c8b38cd2020-11-25T03:53:14ZengFrontiers Media S.A.Frontiers in Big Data2624-909X2020-05-01310.3389/fdata.2020.00018529453Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social ScienceJason Radford0Kenneth Joseph1Department of Political Science, Northeastern University, Boston, MA, United StatesDepartment of Computer Science and Engineering, University at Buffalo, Buffalo, NY, United StatesResearch at the intersection of machine learning and the social sciences has provided critical new insights into social behavior. At the same time, a variety of issues have been identified with the machine learning models used to analyze social data. These issues range from technical problems with the data used and features constructed, to problematic modeling assumptions, to limited interpretability, to the models' contributions to bias and inequality. Computational researchers have sought out technical solutions to these problems. The primary contribution of the present work is to argue that there is a limit to these technical solutions. At this limit, we must instead turn to social theory. We show how social theory can be used to answer basic methodological and interpretive questions that technical solutions cannot when building machine learning models, and when assessing, comparing, and using those models. In both cases, we draw on related existing critiques, provide examples of how social theory has already been used constructively in existing work, and discuss where other existing work may have benefited from the use of specific social theories. We believe this paper can act as a guide for computer and social scientists alike to navigate the substantive questions involved in applying the tools of machine learning to social data.https://www.frontiersin.org/article/10.3389/fdata.2020.00018/fullmachine learningcomputational social sciencemachine learning and social sciencebiasfairness
collection DOAJ
language English
format Article
sources DOAJ
author Jason Radford
Kenneth Joseph
spellingShingle Jason Radford
Kenneth Joseph
Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
Frontiers in Big Data
machine learning
computational social science
machine learning and social science
bias
fairness
author_facet Jason Radford
Kenneth Joseph
author_sort Jason Radford
title Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
title_short Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
title_full Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
title_fullStr Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
title_full_unstemmed Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
title_sort theory in, theory out: the uses of social theory in machine learning for social science
publisher Frontiers Media S.A.
series Frontiers in Big Data
issn 2624-909X
publishDate 2020-05-01
description Research at the intersection of machine learning and the social sciences has provided critical new insights into social behavior. At the same time, a variety of issues have been identified with the machine learning models used to analyze social data. These issues range from technical problems with the data used and features constructed, to problematic modeling assumptions, to limited interpretability, to the models' contributions to bias and inequality. Computational researchers have sought out technical solutions to these problems. The primary contribution of the present work is to argue that there is a limit to these technical solutions. At this limit, we must instead turn to social theory. We show how social theory can be used to answer basic methodological and interpretive questions that technical solutions cannot when building machine learning models, and when assessing, comparing, and using those models. In both cases, we draw on related existing critiques, provide examples of how social theory has already been used constructively in existing work, and discuss where other existing work may have benefited from the use of specific social theories. We believe this paper can act as a guide for computer and social scientists alike to navigate the substantive questions involved in applying the tools of machine learning to social data.
topic machine learning
computational social science
machine learning and social science
bias
fairness
url https://www.frontiersin.org/article/10.3389/fdata.2020.00018/full
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