Yuan Zhang, Laia Castro Herrero, Frank Esser, Alexandre Bovet
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More than 'Left and Right': Revealing Multilevel Online Political Selective Exposure
Selective exposure, individuals' inclination to seek out information that
supports their beliefs while avoiding information that contradicts them, plays
an important role in the emergence of polarization. In the political domain,
selective exposure is usually measured on a left-right ideology scale, ignoring
finer details. Here, we combine survey and Twitter data collected during the
2022 Brazilian Presidential Election and investigate selective exposure
patterns between the survey respondents and political influencers. We analyze
the followship network between survey respondents and political influencers and
find a multilevel community structure that reveals a hierarchical organization
more complex than a simple split between left and right. Moreover, depending on
the level we consider, we find different associations between network indices
of exposure patterns and 189 individual attributes of the survey respondents.
For example, at finer levels, the number of influencer communities a survey
respondent follows is associated with several factors, such as demographics,
news consumption frequency, and incivility perception. In comparison, only
their political ideology is a significant factor at coarser levels. Our work
demonstrates that measuring selective exposure at a single level, such as left
and right, misses important information necessary to capture this phenomenon
correctly.