Examining Similar and Ideologically Correlated Imagery in Online
Political Communication
- URL: http://arxiv.org/abs/2110.01183v3
- Date: Mon, 31 Jul 2023 15:49:56 GMT
- Title: Examining Similar and Ideologically Correlated Imagery in Online
Political Communication
- Authors: Amogh Joshi, Cody Buntain
- Abstract summary: This paper investigates visual media shared by U.S. national politicians on Twitter.
It shows how a politician's variety of image types shared reflects their political position.
It also identifies a hazard in using standard methods for image characterization in this context.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper investigates visual media shared by US national politicians on
Twitter, how a politician's variety of image types shared reflects their
political position, and identifies a hazard in using standard methods for image
characterization in this context. While past work has yielded valuable results
on politicians' use of imagery in social media, that work has focused primarily
on photographic media, which may be insufficient given the variety of visual
media shared in such spaces (e.g., infographics, illustrations, or memes).
Leveraging multiple popular, pre-trained, deep-learning models to characterize
politicians' visuals, this work uses clustering to identify eight types of
visual media shared on Twitter, several of which are not photographic in
nature. Results show individual politicians share a variety of these types, and
the distributions of their imagery across these clusters is correlated with
their overall ideological position -- e.g., liberal politicians appear to share
a larger proportion of infographic-style images, and conservative politicians
appear to share more patriotic imagery. Manual assessment, however, reveals
that these image-characterization models often group visually similar images
with different semantic meaning into the same clusters, which has implications
for how researchers interpret clusters in this space and cluster-based
correlations with political ideology. In particular, collapsing semantic
meaning in these pre-trained models may drive null findings on certain clusters
of images rather than politicians across the ideological spectrum sharing
common types of imagery. We end this paper with a set of researcher
recommendations to prevent such issues.
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