The 2016 U.S. Presidential Candidates and How People Tweeted About Them

The 2016 election provided more language and polling data than any previous election. In addition, the election spurred a new level of social media coverage. The current study analyzed the language of Donald Trump and Hillary Clinton from the debates as well as the tweets of millions of people durin...

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Main Authors: Kayla N. Jordan, James W. Pennebaker, Chase Ehrig
Format: Article
Language:English
Published: SAGE Publishing 2018-07-01
Series:SAGE Open
Online Access:https://doi.org/10.1177/2158244018791218
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spelling doaj-70058efc05854ba2a15a42272628a0812020-11-25T04:02:41ZengSAGE PublishingSAGE Open2158-24402018-07-01810.1177/2158244018791218The 2016 U.S. Presidential Candidates and How People Tweeted About ThemKayla N. Jordan0James W. Pennebaker1Chase Ehrig2The University of Texas at Austin, USAThe University of Texas at Austin, USAThe University of Texas at Austin, USAThe 2016 election provided more language and polling data than any previous election. In addition, the election spurred a new level of social media coverage. The current study analyzed the language of Donald Trump and Hillary Clinton from the debates as well as the tweets of millions of people during the fall presidential campaign. In addition, aggregated polling data allowed for a comparison of daily election-relevant language from Twitter and fluctuations in voter preference. Overall, Trump’s debate language was low in analytic/formal thinking and high in negative emotional tone and authenticity. Clinton was high in analytic and positive emotions, low in authenticity. The analysis of almost 10 million tweets revealed that Trump-relevant tweets were generally more positive than Clinton-related tweets. Most important were lag analyses that predicted polling numbers a week later from tweets. In general, when Clinton-related tweets were more analytic, her subsequent poll numbers dropped. Similarly, positive emotion language in the Clinton-related tweets predicted lower poll numbers a week later. Conversely, Trump-related tweets that were high in positive emotion and in analytic thinking predicted higher subsequent polling. In other words, when Twitter language about the candidates was used in ways inconsistent with the candidates themselves, their poll numbers went up. We propose two possible explanations for these findings: the projection hypothesis, a desire to seek qualities the candidates are missing, and the participant hypothesis, a shift in who is participating in the Twitter conversation over the course of the campaigns.https://doi.org/10.1177/2158244018791218
collection DOAJ
language English
format Article
sources DOAJ
author Kayla N. Jordan
James W. Pennebaker
Chase Ehrig
spellingShingle Kayla N. Jordan
James W. Pennebaker
Chase Ehrig
The 2016 U.S. Presidential Candidates and How People Tweeted About Them
SAGE Open
author_facet Kayla N. Jordan
James W. Pennebaker
Chase Ehrig
author_sort Kayla N. Jordan
title The 2016 U.S. Presidential Candidates and How People Tweeted About Them
title_short The 2016 U.S. Presidential Candidates and How People Tweeted About Them
title_full The 2016 U.S. Presidential Candidates and How People Tweeted About Them
title_fullStr The 2016 U.S. Presidential Candidates and How People Tweeted About Them
title_full_unstemmed The 2016 U.S. Presidential Candidates and How People Tweeted About Them
title_sort 2016 u.s. presidential candidates and how people tweeted about them
publisher SAGE Publishing
series SAGE Open
issn 2158-2440
publishDate 2018-07-01
description The 2016 election provided more language and polling data than any previous election. In addition, the election spurred a new level of social media coverage. The current study analyzed the language of Donald Trump and Hillary Clinton from the debates as well as the tweets of millions of people during the fall presidential campaign. In addition, aggregated polling data allowed for a comparison of daily election-relevant language from Twitter and fluctuations in voter preference. Overall, Trump’s debate language was low in analytic/formal thinking and high in negative emotional tone and authenticity. Clinton was high in analytic and positive emotions, low in authenticity. The analysis of almost 10 million tweets revealed that Trump-relevant tweets were generally more positive than Clinton-related tweets. Most important were lag analyses that predicted polling numbers a week later from tweets. In general, when Clinton-related tweets were more analytic, her subsequent poll numbers dropped. Similarly, positive emotion language in the Clinton-related tweets predicted lower poll numbers a week later. Conversely, Trump-related tweets that were high in positive emotion and in analytic thinking predicted higher subsequent polling. In other words, when Twitter language about the candidates was used in ways inconsistent with the candidates themselves, their poll numbers went up. We propose two possible explanations for these findings: the projection hypothesis, a desire to seek qualities the candidates are missing, and the participant hypothesis, a shift in who is participating in the Twitter conversation over the course of the campaigns.
url https://doi.org/10.1177/2158244018791218
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