通过语义相似性提取角色,生成情感支持对话

Seunghee Han, Se Jin Park, Chae Won Kim, Y. Ro
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引用次数: 0

摘要

在当今世界,通过对话系统提供情感支持正变得越来越重要,因为它可以在许多对话场景中为心理健康和社交互动提供支持。以往的研究表明,使用角色可以有效地产生富有同情心和支持性的回应。它们通常依赖于预先提供的角色,而不是在对话过程中推断出来。然而,在对话开始前获取用户角色并不总是可能的。为了应对这一挑战,我们提出了 PESS(通过语义相似性提取角色),这是一个新颖的框架,可以从对话中自动推断出信息丰富且一致的角色。我们设计了基于语义相似性得分的完整性损失和一致性损失。完整性损失鼓励模型生成缺失的角色信息,而一致性损失则引导模型区分一致和不一致的角色。我们的实验结果表明,由 PESS 推断出的高质量角色信息能有效地生成情感支持性回应。
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Persona Extraction Through Semantic Similarity for Emotional Support Conversation Generation
Providing emotional support through dialogue systems is becoming increasingly important in today's world, as it can support both mental health and social interactions in many conversation scenarios. Previous works have shown that using persona is effective for generating empathetic and supportive responses. They have often relied on pre-provided persona rather than inferring them during conversations. However, it is not always possible to obtain a user persona before the conversation begins. To address this challenge, we propose PESS (Persona Extraction through Semantic Similarity), a novel framework that can automatically infer informative and consistent persona from dialogues. We devise completeness loss and consistency loss based on semantic similarity scores. The completeness loss encourages the model to generate missing persona information, and the consistency loss guides the model to distinguish between consistent and inconsistent persona. Our experimental results demonstrate that high-quality persona information inferred by PESS is effective in generating emotionally supportive responses.
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