Us vs. Them: A Dataset of Populist Attitudes, News Bias and Emotions

Computational modelling of political discourse tasks has become an increasingly important area of research in natural language processing. Populist rhetoric has risen across the political sphere in recent years; however, computational approaches to it have been scarce due to its complex nature. In this paper, we present the new $\textit{Us vs. Them}$ dataset, consisting of 6861 Reddit comments annotated for populist attitudes and the first large-scale computational models of this phenomenon. We investigate the relationship between populist mindsets and social groups, as well as a range of emotions typically associated with these. We set a baseline for two tasks related to populist attitudes and present a set of multi-task learning models that leverage and demonstrate the importance of emotion and group identification as auxiliary tasks.

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Datasets


Introduced in the Paper:

Us Vs. Them

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Populist attitude Us Vs. Them RoBERTa 3-way MTL Pearson Correlation 57 # 1
Acc 71.7 # 1
Populist attitude Us Vs. Them RoBERTa Pearson Correlation 54.5 # 2
Acc 70.5 # 2

Methods


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