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Integrating explanation and prediction in computational social science

Authors :
Tal Yarkoni
Alessandro Vespignani
Filiz Garip
Sendhil Mullainathan
Duncan J. Watts
Thomas L. Griffiths
Simine Vazire
Matthew J. Salganik
Jake M. Hofman
Susan Athey
Helen Margetts
Jon Kleinberg
Source :
Nature. 595:181-188
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

Computational social science is more than just large repositories of digital data and the computational methods needed to construct and analyse them. It also represents a convergence of different fields with different ways of thinking about and doing science. The goal of this Perspective is to provide some clarity around how these approaches differ from one another and to propose how they might be productively integrated. Towards this end we make two contributions. The first is a schema for thinking about research activities along two dimensions-the extent to which work is explanatory, focusing on identifying and estimating causal effects, and the degree of consideration given to testing predictions of outcomes-and how these two priorities can complement, rather than compete with, one another. Our second contribution is to advocate that computational social scientists devote more attention to combining prediction and explanation, which we call integrative modelling, and to outline some practical suggestions for realizing this goal.

Details

ISSN :
14764687 and 00280836
Volume :
595
Database :
OpenAIRE
Journal :
Nature
Accession number :
edsair.doi...........a57c6f517f02d24159e5fb28dfa88955
Full Text :
https://doi.org/10.1038/s41586-021-03659-0