论文标题
经验者特定的情绪和评估预测
Experiencer-Specific Emotion and Appraisal Prediction
论文作者
论文摘要
NLP中的情感分类将情感分配给文本,例如句子或段落。凭借“我哭泣时我感到内gui”之类的文字,重点忽略了每个参与者在这种情况下的观点:作家(“ i”)和其他实体(“他”)实际上可能具有不同的情感状态。不同实体的情绪仅在情感语义角色标签中被视为部分,该任务将语义角色与情感提示单词联系起来。提出一项相关任务,我们将专注于事件的体验者的注意力范围缩小,并向每个事件分配情感(如果有的话)。为此,我们都可以绝对地和评估变量代表每种情感,这是一种心理访问,解释了一个人为什么发展特定情感。在事件描述语料库上,我们的经验者感知的情感和评估模型优于体验者 - 不合时宜的基线,这表明无视事件参与者是情感检测任务的过度简化。
Emotion classification in NLP assigns emotions to texts, such as sentences or paragraphs. With texts like "I felt guilty when he cried", focusing on the sentence level disregards the standpoint of each participant in the situation: the writer ("I") and the other entity ("he") could in fact have different affective states. The emotions of different entities have been considered only partially in emotion semantic role labeling, a task that relates semantic roles to emotion cue words. Proposing a related task, we narrow the focus on the experiencers of events, and assign an emotion (if any holds) to each of them. To this end, we represent each emotion both categorically and with appraisal variables, as a psychological access to explaining why a person develops a particular emotion. On an event description corpus, our experiencer-aware models of emotions and appraisals outperform the experiencer-agnostic baselines, showing that disregarding event participants is an oversimplification for the emotion detection task.