User queries for a real-world dialog system may sometimes fall outside the scope of the system's capabilities, but appropriate system responses will enable smooth processing throughout the human-computer interaction. This paper is concerned with the user's intent, and focuses on out-of-scope intent classification in dialog systems. Although user intents are highly correlated with the application domain, few studies have exploited such correlations for intent classification. Rather than developing a two-stage approach that first classifies the domain and then the intent, we propose a hierarchical multi-task learning approach based on a joint model to classify domain and intent simultaneously. Novelties in the proposed approach include: (1) sharing supervised out-of-scope signals in joint modeling of domain and intent classification to replace a two-stage pipeline; and (2) introducing a hierarchical model that learns the intent and domain representations in the higher and lower layers respectively. Experiments show that the model outperforms existing methods in terms of accuracy, out-of-scope recall and F1. Additionally, threshold-based post-processing further improves performance by balancing precision and recall in intent classification.
翻译:用户对真实世界对话系统的查询有时可能不属于系统能力的范围,但适当的系统反应将使整个人-计算机互动能够顺利处理。本文件关注用户的意图,侧重于对话系统中的范围外意图分类。虽然用户的意图与应用领域密切相关,但很少有研究利用这种关联来进行意图分类。我们建议采用基于同时对域和意图进行分类的联合模式的等级化多任务学习方法,而不是先对域进行分类,然后对意图进行分级。拟议方法的新颖之处包括:(1) 在联合建模域和意图分类中共享受监督的外视信号,以取代两阶段管道;(2) 采用等级模式,分别了解上层和下层的意图和域表示方式。实验表明,该模型在准确性、范围外回顾和F1方面优于现有方法。此外,基于门槛的后处理通过平衡精确性和意图分类的回顾,进一步提高了业绩。