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AttnIO: Knowledge Graph Exploration with In-and-Out Attention Flow for Knowledge-Grounded Dialogue

机译:attnio:知识图表探索与知识接地对话的外出关注流程

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Retrieving the proper knowledge relevant to conversational context is an important challenge in dialogue systems, to engage users with more informative response. Several recent works propose to formulate this knowledge selection problem as a path traversal over an external knowledge graph (KG), but show only a limited utilization of KG structure, leaving rooms of improvement in performance. To this effect, we present AttnIO, a new dialog-conditioned path traversal model that makes a full use of rich structural information in KG based on two directions of attention flows. Through the attention flows, AttnIO is not only capable of exploring a broad range of multi-hop knowledge paths, but also learns to flexibly adjust the varying range of plausible nodes and edges to attend depending on the dialog context. Empirical evaluations present a marked performance improvement of AttnIO compared to all baselines in OpenDi-alKG dataset. Also, we find that our model can be trained to generate an adequate knowledge path even when the paths are not available and only the destination nodes are given as label, making it more applicable to real-world dialogue systems.
机译:检索与对话环境相关的正确知识是对话系统中的一个重要挑战,从事更多信息响应的用户。最近的几项工程建议将该知识选择问题制定为在外部知识图(kg)上遍历的路径,但仅显示了KG结构的有限利用,使房间改善了性能。为此,我们呈现Attnio,这是一个新的对话条件路径遍历模型,可以根据关注流动的两个方向充分利用KG的丰富结构信息。通过注意力,Attnio不仅能够探索广泛的多跳知识路径,而且还可以灵活地调整不同范围的合理节点和边缘,以取决于对话框上下文。与Opendi-Alk Gataset中的所有基线相比,实证评估显示了attnio的显着性能改善。此外,我们发现,即使路径不可用,只有目的地节点作为标签,也可以训练我们的模型以产生足够的知识路径,使其更适用于现实世界对话系统。

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