Multi-task Learning for Multi-turn Dialogue Generation with Topic Drift Modeling

Hongwei Zeng, Zhenjie Hong, J. Liu, Bifan Wei
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Abstract

Multi-turn dialogue generation aims to generate natural and fluent responses that should be consistent with multiple consecutive utterances history. It is a more challenging task compared to its single-turn counterpart since it requires the model to capture the topic drift along with the multi-turn dialogue history. In this paper, we propose a multi-turn dialogue generation model which incorporates topic drift aware information into a hierarchical encoder-decoder framework to generate coherent responses. This model first utilizes a Convolutional Neural Network (CNN) based topic model to obtain the topic representation of each utterance. Then a topic drift model is employed to encode the sequential topics of multi-turn dialogue history to infer the topic of response. During the response generation, a specially designed topic drift aware generator is proposed to dynamically balance the impact of the inferred topic of response and local word structure. Fur-thermore, we employ multi-task learning to optimize the topic drift model and dialogue generation simultaneously. Extensive experimental results on two benchmark datasets (i.e. Cornell Movie Dialog Corpus and Ubuntu Dialogue Dataset) indicate that our proposed model can generate more coherent responses, and significantly outperform other dialogue generation models.
基于主题漂移建模的多回合对话生成多任务学习
多回合对话生成的目的是生成自然流畅的响应,该响应应与多个连续的话语历史相一致。与单回合相比,这是一项更具挑战性的任务,因为它需要模型捕捉主题漂移以及多回合对话历史。在本文中,我们提出了一种多回合对话生成模型,该模型将主题漂移感知信息融入到分层编码器-解码器框架中,以产生连贯的响应。该模型首先利用基于卷积神经网络(CNN)的主题模型来获取每个话语的主题表示。然后利用话题漂移模型对多回合对话历史的顺序话题进行编码,从而推断出应答的话题。在响应生成过程中,提出了一个专门设计的主题漂移感知生成器,以动态平衡响应的推断主题和局部词结构的影响。此外,我们采用多任务学习同时优化话题漂移模型和对话生成。在两个基准数据集(即Cornell Movie对白语料库和Ubuntu对白数据集)上的大量实验结果表明,我们提出的模型可以生成更连贯的响应,并且显著优于其他对白生成模型。
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