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Implementation of A Neural Natural Language Understanding Component for Arabic Dialogue Systems

机译:阿拉伯对话系统的神经自然语言理解组件的实现

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Natural Language Understanding (NLU) is considered a core component in implementing dialogue systems. NLU has been greatly enhanced by deep learning techniques such as word embeddings and deep neural network architectures, but current NLP methods for Arabic language dialogue action classification or semantic decoding is mostly based on handcrafted rule-based systems and methods that use feature engineering, but without the benefit of any form of distributed representation of words. This paper presents an approach to use deep learning techniques for text classification and Named Entity Recognition for the domain of home automation in Arabic. To this end, we present an NLU module that can further be integrated with Automatic Speech Recognition (ASR), a Dialogue Manager (DM) and a Natural Language Generator (NLG) module to build a fully working dialogue system. The paper further describes our process of collecting and annotating the data, structuring the intent classifier and entity extractor models, and finally the evaluation of these methods on different benchmarks.
机译:自然语言理解(NLU)被认为是实施对话系统的核心组成部分。词嵌入和深度神经网络体系结构等深度学习技术极大地增强了NLU,但是当前用于阿拉伯语言对话动作分类或语义解码的NLP方法主要基于手工制作的基于规则的系统和使用特征工程的方法,但没有任何形式的单词的分布式表示的好处。本文提出了一种使用深度学习技术进行文本分类和命名实体识别的方法,用于阿拉伯语的家庭自动化领域。为此,我们提出了一个NLU模块,该模块可以进一步与自动语音识别(ASR),对话管理器(DM)和自然语言生成器(NLG)模块集成在一起,以构建一个完整的对话系统。本文进一步描述了我们收集和注释数据,构造意图分类器和实体提取器模型以及最后在不同基准上评估这些方法的过程。

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