Social media plays an increasing role in our communication with friends and family, and our consumption of information and entertainment. Hence, to design effective ranking functions for posts on social media, it would be useful to predict the affective response to a post (e.g., whether the user is likely to be humored, inspired, angered, informed). Similar to work on emotion recognition (which focuses on the affect of the publisher of the post), the traditional approach to recognizing affective response would involve an expensive investment in human annotation of training data. We introduce CARE$_{db}$, a dataset of 230k social media posts annotated according to 7 affective responses using the Common Affective Response Expression (CARE) method. The CARE method is a means of leveraging the signal that is present in comments that are posted in response to a post, providing high-precision evidence about the affective response of the readers to the post without human annotation. Unlike human annotation, the annotation process we describe here can be iterated upon to expand the coverage of the method, particularly for new affective responses. We present experiments that demonstrate that the CARE annotations compare favorably with crowd-sourced annotations. Finally, we use CARE$_{db}$ to train competitive BERT-based models for predicting affective response as well as emotion detection, demonstrating the utility of the dataset for related tasks.
翻译:社交媒体在我们与朋友和家人的沟通以及我们对信息和娱乐的消费中发挥着越来越大的作用。因此,为了设计社交媒体职位的有效排名功能,有必要预测对一个职位的感官反应(例如,用户是否有可能受到幽默、启发、愤怒、知情 ) 。类似于情感识别工作(重点是该职位的出版商的影响 ), 认识情感反应的传统方法将涉及对培训数据的人文批注进行昂贵的投资。 我们引入了CARE$ ⁇ db}$,这是一套230k社交媒体的数据集,使用共同情感反应表达(CARE)方法对7个影响性反应作出附加说明。 援外社的方法是一种手段,用以利用在回应一个职位的评论中发出的信号,提供高度精准的证据,说明读者对这个职位的感官反应,而没有人文注解。 我们在这里描述的批注过程可以用来扩大该方法的覆盖面,特别是用于新的情感反应。 我们提出实验,将AREARE的感官反应作为我们感官化的感官预测,我们用ARE的感官分析模型来比较性地展示。