Automatic emotion categorization has been predominantly formulated as text classification in which textual units are assigned to an emotion from a predefined inventory, for instance following the fundamental emotion classes proposed by Paul Ekman (fear, joy, anger, disgust, sadness, surprise) or Robert Plutchik (adding trust, anticipation). This approach ignores existing psychological theories to some degree, which provide explanations regarding the perception of events. For instance, the description that somebody discovers a snake is associated with fear, based on the appraisal as being an unpleasant and non-controllable situation. This emotion reconstruction is even possible without having access to explicit reports of a subjective feeling (for instance expressing this with the words "I am afraid."). Automatic classification approaches therefore need to learn properties of events as latent variables (for instance that the uncertainty and the mental or physical effort associated with the encounter of a snake leads to fear). With this paper, we propose to make such interpretations of events explicit, following theories of cognitive appraisal of events, and show their potential for emotion classification when being encoded in classification models. Our results show that high quality appraisal dimension assignments in event descriptions lead to an improvement in the classification of discrete emotion categories. We make our corpus of appraisal-annotated emotion-associated event descriptions publicly available.
翻译:自动情感分类主要是作为文本分类,在文本分类中,文字单位被分配到预定清单中的情绪,例如,在保罗·埃克曼(恐惧、喜悦、愤怒、厌恶、厌恶、悲伤、惊讶)或罗伯特·普卢奇克(增加信任、期待)提议的基本情绪类(恐惧、恐惧)之后;这种方法在某种程度上忽视了现有的心理理论,对事件感知提供了解释。例如,根据对事件认知评估的理论,描述某人发现蛇与恐惧相关联,在对事件进行认知评估时显示其情感分类的可能性。我们的结果显示,在事件描述中进行高质量的评估后,可改进对离散情感的分类。