Subjective texts have been studied by several works as they can induce certain behaviours in their users. Most work focuses on user-generated texts in social networks, but some other texts also comprise opinions on certain topics and could influence judgement criteria during political decisions. In this work, we address the task of Targeted Sentiment Analysis for the domain of news headlines, published by the main outlets during the 2019 Argentinean Presidential Elections. For this purpose, we present a polarity dataset of 1,976 headlines mentioning candidates in the 2019 elections at the target level. Preliminary experiments with state-of-the-art classification algorithms based on pre-trained linguistic models suggest that target information is helpful for this task. We make our data and pre-trained models publicly available.
翻译:若干著作对主观文本进行了研究,因为这些文本能够引起用户的某些行为,大多数工作侧重于社交网络中的用户生成文本,但其他一些文本也包含对某些议题的意见,并可能影响政治决策中的判断标准。在这项工作中,我们处理2019年阿根廷总统选举期间主要媒体发表的新闻头条标题领域的定向感知分析任务。为此目的,我们提供了一组极性数据,共有1,976条头条标题,其中提到2019年选举的目标候选人。根据预先培训的语言模型进行的最新分类算法的初步实验表明,目标信息有助于这项任务。我们公布我们的数据和预先培训的模式。