论文标题
体验者,刺激或目标:哪些语义角色使机器学习可以推断情绪?
Experiencers, Stimuli, or Targets: Which Semantic Roles Enable Machine Learning to Infer the Emotions?
论文作者
论文摘要
情感识别主要是作为文本分类表达的,其中文本单元被从预定义的库存中分配给情感(例如恐惧,喜悦,愤怒,愤怒,厌恶,悲伤,惊喜,信任,期待)。最近,已经开发了语义角色标签方法来从文本中提取结构,以回答:“谁被描述为感受情绪?” (体验者),“是什么引起这种情感?” (目标)。刺激(做X使每个人都感到悲伤),通过训练五个可用的数据集中的情感分类模型,并以一种语义的方式掩盖了这些角色的填充物,并发现多个语料库,刺激和目标遍布各种情绪,尤其是在各个模型中进行分类。我们发现信息信息可以改善情绪分类。
Emotion recognition is predominantly formulated as text classification in which textual units are assigned to an emotion from a predefined inventory (e.g., fear, joy, anger, disgust, sadness, surprise, trust, anticipation). More recently, semantic role labeling approaches have been developed to extract structures from the text to answer questions like: "who is described to feel the emotion?" (experiencer), "what causes this emotion?" (stimulus), and at which entity is it directed?" (target). Though it has been shown that jointly modeling stimulus and emotion category prediction is beneficial for both subtasks, it remains unclear which of these semantic roles enables a classifier to infer the emotion. Is it the experiencer, because the identity of a person is biased towards a particular emotion (X is always happy)? Is it a particular target (everybody loves X) or a stimulus (doing X makes everybody sad)? We answer these questions by training emotion classification models on five available datasets annotated with at least one semantic role by masking the fillers of these roles in the text in a controlled manner and find that across multiple corpora, stimuli and targets carry emotion information, while the experiencer might be considered a confounder. Further, we analyze if informing the model about the position of the role improves the classification decision. Particularly on literature corpora we find that the role information improves the emotion classification.