Conversations emerge as the primary media for exchanging ideas and conceptions. From the listener's perspective, identifying various affective qualities, such as sarcasm, humour, and emotions, is paramount for comprehending the true connotation of the emitted utterance. However, one of the major hurdles faced in learning these affect dimensions is the presence of figurative language, viz. irony, metaphor, or sarcasm. We hypothesize that any detection system constituting the exhaustive and explicit presentation of the emitted utterance would improve the overall comprehension of the dialogue. To this end, we explore the task of Sarcasm Explanation in Dialogues, which aims to unfold the hidden irony behind sarcastic utterances. We propose MOSES, a deep neural network, which takes a multimodal (sarcastic) dialogue instance as an input and generates a natural language sentence as its explanation. Subsequently, we leverage the generated explanation for various natural language understanding tasks in a conversational dialogue setup, such as sarcasm detection, humour identification, and emotion recognition. Our evaluation shows that MOSES outperforms the state-of-the-art system for SED by an average of ~2% on different evaluation metrics, such as ROUGE, BLEU, and METEOR. Further, we observe that leveraging the generated explanation advances three downstream tasks for affect classification - an average improvement of ~14% F1-score in the sarcasm detection task and ~2% in the humour identification and emotion recognition task. We also perform extensive analyses to assess the quality of the results.
翻译:作为交流想法和概念的主要媒体,人们会进行交谈。从听众的角度来看,辨别各种情感品质,如讽刺、幽默和情感等,对于理解所发言论的真实含义至关重要。然而,在学习这些影响层面时面临的一个主要障碍是存在具有比喻的语言、讽刺、隐喻或讽刺。我们假想,任何构成详尽和明确表述所发言论的探测系统,都会改善对话的总体理解。为此,我们探索了对话中Sarcasm解释的任务,其目的是在讽刺言论背后展示隐藏的讽刺。我们建议MOSES,一个深度神经网络,将多式(沙尔坦)对话作为投入,并产生自然语言句作为解释。随后,我们利用由此产生的各种自然语言理解任务的解释,如沙尔卡探测、幽默识别和情感认知。我们的评估显示,MOSES超越了在讽刺2的言辞背后隐藏的讽刺讽刺。我们通过平均的IMO2 评估了SEGO的状态和平均智能分析结果,从而进一步评估了SEOB平均任务中的平均定位系统。