an article by Marco Bastos and Dan Mercea (City, University of London, UK) published in Information, Communication & Society Volume 21 Issue 7 (2018)
Abstract
In this paper, a proof of concept study is performed to validate the use of social media signal to model the ideological coordinates underpinning the Brexit debate. We rely on geographically enriched Twitter data and a purpose-built, deep learning algorithm to map the political value space of users tweeting the referendum onto Parliamentary Constituencies.
We find a significant incidence of nationalist sentiments and economic views expressed on Twitter, which persist throughout the campaign and are only offset in the last days when a globalist upsurge brings the British Twittersphere closer to a divide between nationalist and globalist standpoints.
Upon combining demographic variables with the classifier scores, we find that the model explains 41% of the variance in the referendum vote, an indication that not only material inequality, but also ideological readjustments have contributed to the outcome of the referendum.
We conclude with a discussion of conceptual and methodological challenges in signal-processing social media data as a source for the measurement of public opinion.
Tuesday, 24 July 2018
Parametrizing Brexit: mapping Twitter political space to parliamentary constituencies
Labels:
Brexit,
machine_learning,
nationalism,
populism,
public_opinion,
referendum,
Twitter
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