Most existing neural network based task-oriented dialogue systems follow encoder-decoder paradigm, where the decoder purely depends on the source texts to generate a sequence of words, usually suffering from instability and poor readability. Inspired by the traditional template-based generation approaches, we propose a template-guided hybrid pointer network for the knowledge-based task-oriented dialogue system, which retrieves several potentially relevant answers from a pre-constructed domain-specific conversational repository as guidance answers, and incorporates the guidance answers into both the encoding and decoding processes. Specifically, we design a memory pointer network model with a gating mechanism to fully exploit the semantic correlation between the retrieved answers and the ground-truth response. We evaluate our model on four widely used task-oriented datasets, including one simulated and three manually created datasets. The experimental results demonstrate that the proposed model achieves significantly better performance than the state-of-the-art methods over different automatic evaluation metrics.
翻译:现有大多数基于以任务为导向的神经网络对话系统都遵循编码器-解码器模式,其中,解码器纯粹依赖源文本来生成一系列的词汇,通常是不稳定和易读性差的。受传统模板生成方法的启发,我们为基于知识的基于任务的对话系统提议了一个模板指导混合指示器网络,为基于知识的基于任务的对话系统取出若干潜在相关的答案,作为指导答案,并将指导答案纳入编码和解码程序。具体地说,我们设计了一个带有格子机制的记忆点网络模式,以充分利用检索到的答案与地面真相反应之间的语义相关性。我们评估了我们关于四种广泛使用的任务导向数据集的模式,包括一个模拟和三个人工创建的数据集。实验结果显示,拟议的模型在不同的自动评价指标方面,其性能大大优于最先进的方法。