Extracting moral sentiment from text is a vital component in understanding public opinion, social movements, and policy decisions. The Moral Foundation Theory identifies five moral foundations, each associated with a positive and negative polarity. However, moral sentiment is often motivated by its targets, which can correspond to individuals or collective entities. In this paper, we introduce morality frames, a representation framework for organizing moral attitudes directed at different entities, and come up with a novel and high-quality annotated dataset of tweets written by US politicians. Then, we propose a relational learning model to predict moral attitudes towards entities and moral foundations jointly. We do qualitative and quantitative evaluations, showing that moral sentiment towards entities differs highly across political ideologies.
翻译:从文本中提取道德情绪是理解公众舆论、社会运动和政策决定的一个关键组成部分。 道德基金会理论确定了五个道德基础,每个基础都与正反两极相关。然而,道德情绪的动机往往是其目标,可以与个人或集体实体相对应。 在本文中,我们引入了道德框架,即组织针对不同实体的道德态度的代表框架,并提出了美国政治家所撰写的带新奇和高质量的附加说明的推文数据集。 然后,我们提出了一个关联学习模式,以共同预测对实体和道德基础的道德态度。 我们做了定性和定量评估,表明对实体的道德情绪在政治意识形态上有很大差异。