Automatic Recognition of the General-Purpose Communicative Functions Defined by the ISO 24617-2 Standard for Dialog Act Annotation (Extended Abstract)

Eugénio Ribeiro, Ricardo Ribeiro, David Martins de Matos
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Abstract

From the perspective of a dialog system, the identification of the intention behind the segments in a dialog is important, as it provides cues regarding the information present in the segments and how they should be interpreted. The ISO 24617-2 standard for dialog act annotation defines a hierarchically organized set of general-purpose communicative functions that correspond to different intentions that are relevant in the context of a dialog. In this paper, we explore the automatic recognition of these functions. To do so, we propose to adapt existing approaches to dialog act recognition, so that they can deal with the hierarchical classification problem. More specifically, we propose the use of an end-to-end hierarchical network with cascading outputs and maximum a posteriori path estimation to predict the communicative function at each level of the hierarchy, preserve the dependencies between the functions in the path, and decide at which level to stop. Additionally, we rely on transfer learning processes to address the data scarcity problem. Our experiments on the DialogBank show that this approach outperforms both flat and hierarchical approaches based on multiple classifiers and that each of its components plays an important role in the recognition of general-purpose communicative functions.
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ISO 24617-2对话动作注释标准中通用交际功能的自动识别(扩展摘要)
从对话系统的角度来看,识别对话片段背后的意图非常重要,因为它提供了关于片段中存在的信息以及如何解释它们的线索。对话行为注释的ISO 24617-2标准定义了一组分层组织的通用交流功能,这些功能对应于对话上下文中相关的不同意图。在本文中,我们对这些函数的自动识别进行了探讨。为此,我们提出对现有的对话行为识别方法进行改进,使其能够处理层次分类问题。更具体地说,我们建议使用具有级联输出和最大后测路径估计的端到端分层网络来预测每一层的通信功能,保留路径中功能之间的依赖关系,并决定在哪一层停止。此外,我们依靠迁移学习过程来解决数据稀缺问题。我们在DialogBank上的实验表明,这种方法优于基于多个分类器的扁平和分层方法,并且它的每个组件在通用交际功能的识别中都起着重要作用。
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