The speech act of complaining is used by humans to communicate a negative mismatch between reality and expectations as a reaction to an unfavorable situation. Linguistic theory of pragmatics categorizes complaints into various severity levels based on the face-threat that the complainer is willing to undertake. This is particularly useful for understanding the intent of complainers and how humans develop suitable apology strategies. In this paper, we study the severity level of complaints for the first time in computational linguistics. To facilitate this, we enrich a publicly available data set of complaints with four severity categories and train different transformer-based networks combined with linguistic information achieving 55.7 macro F1. We also jointly model binary complaint classification and complaint severity in a multi-task setting achieving new state-of-the-art results on binary complaint detection reaching up to 88.2 macro F1. Finally, we present a qualitative analysis of the behavior of our models in predicting complaint severity levels.
翻译:投诉的言论行为被人类用来传达现实与期望之间的负面不匹配,作为对不利情况的反应。务实者的语言理论根据投诉者愿意承担的面部威胁将投诉分为不同严重程度。这对于了解投诉者的意图和人类如何制定适当的道歉战略特别有用。在本文件中,我们首次研究计算语言中投诉的严重程度。为了便利这项工作,我们丰富了公开可得到的四类投诉的数据,并培训了不同变压器网络,并结合语言信息,实现了55.7宏观F.1。 我们还在多任务环境中联合制作了二进制投诉分类和投诉严重程度模型,在二进制投诉发现方面达到88.2宏观F.1的新的最新结果。最后,我们从质量上分析了我们预测投诉严重程度的模式行为。