The consistency of a response to a given post at semantic-level and emotional-level is essential for a dialogue system to deliver human-like interactions. However, this challenge is not well addressed in the literature, since most of the approaches neglect the emotional information conveyed by a post while generating responses. This article addresses this problem by proposing a unifed end-to-end neural architecture, which is capable of simultaneously encoding the semantics and the emotions in a post for generating more intelligent responses with appropriately expressed emotions. Extensive experiments on real-world data demonstrate that the proposed method outperforms the state-of-the-art methods in terms of both content coherence and emotion appropriateness.
翻译:对语义和情感层面的某一职位作出一致反应对于对话系统提供人性化互动至关重要,然而,这项挑战在文献中没有得到很好的解决,因为大多数方法忽视了一篇文章所传递的情感信息,同时产生了回应。本条款通过提出一个未经筛选的端到端神经结构来解决这一问题,该结构能够同时将语义和情绪编码在一个职位上,用适当表达的情感产生更明智的反应。关于真实世界数据的广泛实验表明,拟议的方法在内容一致性和情感适当性两方面都超过了最先进的方法。