Crossing the Aisle: Unveiling Partisan and Counter-Partisan Events in
News Reporting
- URL: http://arxiv.org/abs/2310.18768v1
- Date: Sat, 28 Oct 2023 17:50:13 GMT
- Title: Crossing the Aisle: Unveiling Partisan and Counter-Partisan Events in
News Reporting
- Authors: Kaijian Zou, Xinliang Frederick Zhang, Winston Wu, Nick Beauchamp, Lu
Wang
- Abstract summary: We study to which degree media balances news reporting and affects consumers through event inclusion or omission.
We first introduce the task of detecting both partisan and counter-partisan events.
Our findings highlight both the ways in which the news subtly shapes opinion and the need for large language models.
- Score: 7.8192232188516115
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: News media is expected to uphold unbiased reporting. Yet they may still
affect public opinion by selectively including or omitting events that support
or contradict their ideological positions. Prior work in NLP has only studied
media bias via linguistic style and word usage. In this paper, we study to
which degree media balances news reporting and affects consumers through event
inclusion or omission. We first introduce the task of detecting both partisan
and counter-partisan events: events that support or oppose the author's
political ideology. To conduct our study, we annotate a high-quality dataset,
PAC, containing 8,511 (counter-)partisan event annotations in 304 news articles
from ideologically diverse media outlets. We benchmark PAC to highlight the
challenges of this task. Our findings highlight both the ways in which the news
subtly shapes opinion and the need for large language models that better
understand events within a broader context. Our dataset can be found at
https://github.com/launchnlp/Partisan-Event-Dataset.
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