Measuring public opinion via digital footprints

Do digital traces accurately reflect individual preferences? Can signals from social media be used to measure public opinion? This paper provides evidence in favour of these hypotheses. We test a regression and post-stratification strategy that combines samples of digital traces with a stratificatio...

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Main Authors: Cerina, R, Duch, R
Format: Journal article
Language:English
Published: Elsevier 2020
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author Cerina, R
Duch, R
author_facet Cerina, R
Duch, R
author_sort Cerina, R
collection OXFORD
description Do digital traces accurately reflect individual preferences? Can signals from social media be used to measure public opinion? This paper provides evidence in favour of these hypotheses. We test a regression and post-stratification strategy that combines samples of digital traces with a stratification frame containing individual-level socio-economic data, in order to generate area forecasts of the outcome social phenomena of interest. In our example, we forecast the two-party vote of Democrats and Republicans in the 2018 Texas congressional district and Senate election. Our implementation assumes we can observe, and sample, individuals signaling their preference by favoring one virtual location over another; in our case, visiting Democrat versus Republican Facebook pages during the election campaign. Over the course of seven weeks preceding the mid-term elections we generate vote share forecasts which do not use any traditional survey data as input. Our results indicate that individuals leave digital traces that reflect their preferences.
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spelling oxford-uuid:c094cb13-c88f-4cef-9b22-3018a82181012024-03-06T11:12:27ZMeasuring public opinion via digital footprintsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:c094cb13-c88f-4cef-9b22-3018a8218101EnglishSymplectic ElementsElsevier2020Cerina, RDuch, RDo digital traces accurately reflect individual preferences? Can signals from social media be used to measure public opinion? This paper provides evidence in favour of these hypotheses. We test a regression and post-stratification strategy that combines samples of digital traces with a stratification frame containing individual-level socio-economic data, in order to generate area forecasts of the outcome social phenomena of interest. In our example, we forecast the two-party vote of Democrats and Republicans in the 2018 Texas congressional district and Senate election. Our implementation assumes we can observe, and sample, individuals signaling their preference by favoring one virtual location over another; in our case, visiting Democrat versus Republican Facebook pages during the election campaign. Over the course of seven weeks preceding the mid-term elections we generate vote share forecasts which do not use any traditional survey data as input. Our results indicate that individuals leave digital traces that reflect their preferences.
spellingShingle Cerina, R
Duch, R
Measuring public opinion via digital footprints
title Measuring public opinion via digital footprints
title_full Measuring public opinion via digital footprints
title_fullStr Measuring public opinion via digital footprints
title_full_unstemmed Measuring public opinion via digital footprints
title_short Measuring public opinion via digital footprints
title_sort measuring public opinion via digital footprints
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