使用预先训练的语言模型进行情感解释

Jacky Casas, Samuel Torche, Karl Daher, E. Mugellini, Omar Abou Khaled
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引用次数: 3

摘要

情感风格迁移是自然语言处理(NLP)中一个新兴的、具有挑战性的问题。基于变形器的语言模型正变得非常强大,所以人们想知道是否有可能利用它们来执行情感风格转移。到目前为止,以前的工作还没有使用基于变压器的模型来完成这项任务。为了解决这个问题,我们对带有损坏情绪数据的GPT-2模型进行了微调。这将训练模型增加输入句子的情感强度。结合释义模型,我们开发了一个能够将情感转化为释义的系统。我们进行了定性研究与人类法官,以及定量评价。尽管与目前的技术水平相比,意译指标表现不佳,但情绪转移被证明是有效的,尤其是对恐惧、悲伤和厌恶的情绪。在自动评估和人工评估中,这些情绪的感知都得到了改善。这种技术可以极大地促进自然语言理解(NLU)系统的训练句子的自动创建,但它也可以集成到情感或移情对话架构中。
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Emotional Paraphrasing Using Pre-trained Language Models
Emotion style transfer is a recent and challenging problem in Natural Language Processing (NLP). Transformer-based language models are becoming extremely powerful, so one wonders if it would be possible to leverage them to perform emotion style transfer. So far, previous work has not used transformer-based models for this task. To address this task, we fine-tune a GPT-2 model with corrupted emotional data. This will train the model to increase the emotional intensity of the input sentence. Coupled with a paraphrasing model, we develop a system capable of transferring an emotion into a paraphrase. We conducted a qualitative study with human judges, as well as a quantitative evaluation. Although the paraphrase metrics show poor performance compared to the state of the art, the transfer of emotion proved to be effective, especially for the emotions fear, sadness, and disgust. The perception of these emotions were improved both in the automatic and human evaluations. Such technology can significantly facilitate the automatic creation of training sentences for natural language understanding (NLU) systems, but it can also be integrated into an emotional or empathic dialogue architecture.
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