死亡还是谋杀?预测杀害女性新闻报道中的责任认知

Q3 Environmental Science AACL Bioflux Pub Date : 2022-09-24 DOI:10.48550/arXiv.2209.12030
Gosse Minnema, Sara Gemelli, C. Zanchi, T. Caselli, M. Nissim
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引用次数: 2

摘要

不同的语言表达可以通过强调某些参与者而不是其他参与者,从不同的角度概念化同一事件。在这里,我们调查了一个具有社会后果的案例:基于性别的暴力(GBV)的语言表达如何影响我们认为应该负责的人?我们在这一领域先前的心理语言学研究的基础上,对从意大利报纸语料库中自动提取的GBV描述进行了大规模的感知调查。然后,我们训练回归模型来预测GBV参与者在感知责任的不同维度上的显著性。我们最好的模型(微调BERT)显示出稳定的整体表现,在维度和参与者之间有很大的差异:突出的焦点比突出的责备更容易预测,肇事者的突出比受害者的突出更容易预测。使用不同表示的脊回归模型的实验表明,基于语言学理论的特征与基于单词的特征相似。总的来说,我们表明,不同的语言选择确实会引发不同的责任感知,而且这种感知可以自动建模。这项工作可以成为提高公众和新闻制作人对不同视角后果的认识的核心工具。
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Dead or Murdered? Predicting Responsibility Perception in Femicide News Reports
Different linguistic expressions can conceptualize the same event from different viewpoints by emphasizing certain participants over others. Here, we investigate a case where this has social consequences: how do linguistic expressions of gender-based violence (GBV) influence who we perceive as responsible? We build on previous psycholinguistic research in this area and conduct a large-scale perception survey of GBV descriptions automatically extracted from a corpus of Italian newspapers. We then train regression models that predict the salience of GBV participants with respect to different dimensions of perceived responsibility. Our best model (fine-tuned BERT) shows solid overall performance, with large differences between dimensions and participants: salient _focus_ is more predictable than salient _blame_, and perpetrators’ salience is more predictable than victims’ salience. Experiments with ridge regression models using different representations show that features based on linguistic theory similarly to word-based features. Overall, we show that different linguistic choices do trigger different perceptions of responsibility, and that such perceptions can be modelled automatically. This work can be a core instrument to raise awareness of the consequences of different perspectivizations in the general public and in news producers alike.
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来源期刊
AACL Bioflux
AACL Bioflux Environmental Science-Management, Monitoring, Policy and Law
CiteScore
1.40
自引率
0.00%
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0
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