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Topic-enhanced emotional conversation generation with attention mechanism

机译:带有注意力机制的话题增强型情感对话的产生

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摘要

Emotional conversation generation has elicited a wide interest in both academia and industry. However, existing emotional neural conversation systems tend to ignore the necessity to combine topic and emotion in generating responses, possibly leading to a decline in the quality of responses. This paper proposes a topic-enhanced emotional conversation generation model that incorporates emotional factors and topic information into the conversation system, by using two mechanisms. First, we use a Twitter latent Dirichlet allocation (LDA) model to obtain topic words of the input sequences as extra prior information, ensuring the consistency of content between posts and responses for emotional conversation generation. Second, the system uses a dynamic emotional attention mechanism to adaptively acquire content-related and affective information of the input texts and extra topics. The advantage of this study lies in the fact that the presented model can generate abundant emotional responses, with the contents being related and diverse. To demonstrate the effectiveness of our method, we conduct extensive experiments on large-scale Weibo post–response pairs. Experimental results show that our method achieves good performance, even outperforming some existing models.
机译:情感对话的产生引起了学术界和行业的广泛兴趣。但是,现有的情绪神经对话系统往往会忽略将话题和情绪结合在一起以生成响应的必要性,这可能导致响应质量下降。本文提出了一种主题增强型情感对话生成模型,该模型通过两种机制将情感因素和主题信息整合到对话系统中。首先,我们使用Twitter潜在Dirichlet分配(LDA)模型来获取输入序列的主题词,作为额外的先验信息,从而确保帖子和响应之间的内容一致性,以进行情感对话。其次,系统使用动态情绪注意力机制来自适应地获取输入文本和额外主题的与内容相关的情感信息。这项研究的优势在于,所提出的模型可以产生丰富的情感反应,其内容是相关且多样的。为了证明我们方法的有效性,我们对大型微博响应后对进行了广泛的实验。实验结果表明,该方法取得了良好的性能,甚至优于某些现有模型。

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