TodBR: Target-Oriented Dialog with Bidirectional Reasoning on Knowledge Graph

APPLIED SCIENCES-BASEL(2024)

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摘要
Featured Application This article proposes a reasoning-based dialog agent to facilitate dialog goal accomplishment through natural language interaction. The model can be applied in the conversation recommendation, topic guidance, psychotherapy and education domains.Abstract Target-oriented dialog explores how a dialog agent connects two topics cooperatively and coherently, which aims to generate a "bridging" utterance connecting the new topic to the previous conversation turn. The central focus of this task entails multi-hop reasoning on a knowledge graph (KG) to achieve the desired target. However, current target-oriented dialog approaches suffer from inefficiencies in reasoning and the inability to locate pertinent key information without bidirectional reason. To address these limitations, we present a bidirectional reasoning model for target-oriented dialog implemented on a commonsense knowledge graph. Furthermore, we introduce an automated technique for constructing dialog subgraphs, which aids in acquiring multi-hop reasoning capabilities. Our experiments demonstrate that our proposed method attains superior performance in reaching the target while providing more coherent responses.
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关键词
target-oriented dialog,response generation,topic guidance,graph reasoning,natural language processing
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