Energy-Based Modelling for Dialogue State Tracking

A. Trinh, R. Ross, John D. Kelleher
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引用次数: 3

Abstract

The uncertainties of language and the complexity of dialogue contexts make accurate dialogue state tracking one of the more challenging aspects of dialogue processing. To improve state tracking quality, we argue that relationships between different aspects of dialogue state must be taken into account as they can often guide a more accurate interpretation process. To this end, we present an energy-based approach to dialogue state tracking as a structured classification task. The novelty of our approach lies in the use of an energy network on top of a deep learning architecture to explore more signal correlations between network variables including input features and output labels. We demonstrate that the energy-based approach improves the performance of a deep learning dialogue state tracker towards state-of-the-art results without the need for many of the other steps required by current state-of-the-art methods.
基于能量的对话状态跟踪建模
语言的不确定性和对话语境的复杂性使得准确的对话状态跟踪成为对话处理中更具挑战性的方面之一。为了提高状态跟踪质量,我们认为必须考虑对话状态不同方面之间的关系,因为它们通常可以指导更准确的解释过程。为此,我们提出了一种基于能量的对话状态跟踪方法,将其作为结构化分类任务。我们方法的新颖之处在于在深度学习架构之上使用能量网络来探索网络变量(包括输入特征和输出标签)之间的更多信号相关性。我们证明,基于能量的方法可以提高深度学习对话状态跟踪器的性能,使其达到最先进的结果,而不需要当前最先进的方法所需的许多其他步骤。
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