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Zero-shot User Intent Detection via Capsule Neural Networks

机译:通过胶囊神经网络的零镜头用户意图检测

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User intent detection plays a critical role in question-answering and dialog systems. Most previous works treat intent detection as a classification problem where utterances are labeled with predefined intents. However, it is labor-intensive and time-consuming to label users' utterances as intents are diversely expressed and novel intents will continually be involved. Instead, we study the zero-shot intent detection problem, which aims to detect emerging user intents where no labeled utterances are currently available. We propose two capsule-based architectures: INTENT-CapsNet that extracts semantic features from utterances and aggregates them to discriminate existing intents, and INTENTCAPSNET-ZSL which gives IntentCapsNet the zero-shot learning ability to discriminate emerging intents via knowledge transfer from existing intents. Experiments on two real-world datasets show that our model not only can better discriminate diversely expressed existing intents, but is also able to discriminate emerging intents when no labeled utterances are available.
机译:用户意图检测在问答系统和对话系统中扮演着至关重要的角色。先前的大多数工作都将意图检测视为分类问题,其中用预定义的意图标记话语。然而,由于意图被多样化地表达并且新颖的意图将继续被涉及,因此标记用户的话语是费力且费时的。取而代之的是,我们研究零击意图检测问题,该问题旨在检测当前没有标记话语的新兴用户意图。我们提出了两种基于胶囊的体系结构:INTENT-CapsNet从话语中提取语义特征并将其聚合以区分现有意图; INTENTCAPSNET-ZSL使IntentCapsNet能够通过零转移学习能力通过从现有意图中进行知识转移来区分新兴意图。在两个真实世界的数据集上进行的实验表明,我们的模型不仅可以更好地区分不同表达的现有意图,而且在没有可用标签话语的情况下也能够区分新兴意图。

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