Joint Slot Filling and Intent Detection in Spoken Language Understanding by Hybrid CNN-LSTM Model

Moath Al Ali, Bassel Zaity, P. Drobintsev, H. Wannous, Igor Chernoruckiy, A. Filchenkov
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引用次数: 3

Abstract

We investigate the usage of hybrid convolutional and long- short-term memory neural networks for joint slot filling and intent detection in spoken language understanding. We propose a novel model that combines between convolutional neural networks, for their ability to detect complex features in the input sequences by applying filters to frames of these inputs, and recurrent neural networks taking in account the fact, that they can keep track of the long- and short- term dependencies in the input sequences. We choose to build a model for joint slot filling and intent detection, because we believe, that there is a strong relation between the intent and the semantic slots. A joint model can reflect this relation, figure it out and make use of it to enhance the prediction results. We use the Airline Travel Information System (ATIS) dataset to measure the performance of our model and compare it with the results of other models, as this dataset has become one of the most popular datasets for spoken language understanding problem.
基于CNN-LSTM混合模型的口语理解联合槽填充和意图检测
我们研究了混合卷积神经网络和长短期记忆神经网络在口语理解中用于关节槽填充和意图检测的应用。我们提出了一种新的模型,它结合了卷积神经网络,因为它们能够通过对这些输入的帧应用滤波器来检测输入序列中的复杂特征,而循环神经网络考虑到它们可以跟踪输入序列中的长期和短期依赖关系。我们选择建立一个联合槽填充和意图检测的模型,因为我们认为意图和语义槽之间存在很强的关系。联合模型可以反映这种关系,找出并利用这种关系来提高预测效果。我们使用航空旅行信息系统(ATIS)数据集来衡量我们的模型的性能,并将其与其他模型的结果进行比较,因为该数据集已成为口语理解问题最流行的数据集之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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