Sentiment tasks such as hate speech detection and sentiment analysis, especially when performed on languages other than English, are often low-resource. In this study, we exploit the emotional information encoded in emojis to enhance the performance on a variety of sentiment tasks. This is done using a transfer learning approach, where the parameters learned by an emoji-based source task are transferred to a sentiment target task. We analyse the efficacy of the transfer under three conditions, i.e. i) the emoji content and ii) label distribution of the target task as well as iii) the difference between monolingually and multilingually learned source tasks. We find i.a. that the transfer is most beneficial if the target task is balanced with high emoji content. Monolingually learned source tasks have the benefit of taking into account the culturally specific use of emojis and gain up to F1 +0.280 over the baseline.
翻译:在这项研究中,我们利用在情绪化中编码的情感信息来提高各种情绪化任务的业绩,这是采用转让学习方法完成的,其中将基于情绪的源任务所学参数转移到情感化目标任务中。我们分析了在三种条件下转让的效果,即:一) 情绪化内容和二) 目标任务标签分布以及三) 单语化和多语言化的源任务之间的差异。我们发现,如果目标任务与高情绪化内容平衡,转让最有利。单语化源任务的好处是考虑到对情绪化的文化特定使用,并在基线上获得最高F1+0.280。