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Grounding Dialogue Systems via Knowledge Graph Aware Decoding with Pre-trained Transformers

机译:通过知识图对接地对话系统意识到使用预先训练的变压器解码

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摘要

Generating knowledge grounded responses in both goal and non-goal oriented dialogue systems is an important research challenge. Knowledge Graphs (KG) can be viewed as an abstraction of the real world, which can potentially facilitate a dialogue system to produce knowledge grounded responses. However, integrating KGs into the dialogue generation process in an end-to-end manner is a non-trivial task. This paper proposes a novel architecture for integrating KGs into the response generation process by training a BERT model that learns to answer using the elements of the KG (entities and relations) in a multi-task, end-to-end setting. The k-hop subgraph of the KG is incorporated into the model during training and inference using Graph Laplacian. Empirical evaluation suggests that the model achieves better knowledge groundedness (measured via Entity F1 score) compared to other state-of-the-art models for both goal and non-goal oriented dialogues.
机译:在目标和非目标面向对话系统中产生知识的基础反应是一个重要的研究挑战。 知识图(KG)可以被视为现实世界的抽象,这可能有助于对话系统来产生知识接地的反应。 但是,以端到端的方式将kgs集成到对话生成过程中是非琐碎的任务。 本文提出了一种新的架构,通过培训使用多任务,端到端设置中的kg(实体和关系)的元素来训练学习的BERT模型将KG集成到响应生成过程中。 KG的K-HOP子图在使用图拉普拉斯的训练和推论期间纳入模型。 实证评价表明,与其他最先进的模型相比,该模型实现了更好的知识接地(通过实体F1得分测量),以实现目标和非目标面向对话。

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