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Short-Spoken Language Intent Classification with Conditional Sequence Generative Adversarial Network

机译:用条件序列生成对抗网络进行短语语言意图分类

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As one of the most thrilling tasks of natural language understanding (NLU), intent classification in a dialogue system has received a great deal of attention in both industry and academia. The major limiting factor on intent classification is the lack of tagged data. To solve it, in this paper, we propose a conditional sequence generative adversarial network (cSeq-GAN) for intent classification of short-spoken language, in which we simultaneously train a generative model and a discriminative model for two tasks, one to distinguish the generated text from the real spoken one, while the other to predict its intent category. More reliable tagged data obtained by the generator greatly improves the performance of the intent classification task. Extensive experiments on both Air Travel Information System (ATIS) and our selling robot dialogue system for insurance industries demonstrate that our cSeq-GAN achieves competitive classification accuracy with other state-of-art methods of text classification.
机译:作为自然语言理解(NLU)最激动人心的任务之一,对话系统的意图分类已经在行业和学术界中获得了大量的关注。意图分类的主要限制因素是缺乏标记数据。为了解决它,在本文中,我们提出了一种有条件的序列生成的对抗网络(CSEQ-GaN),用于意图分类短语语言,我们同时培养了一个生成模型和两个任务的歧视模型,一个人来区分从真正的口语中生成文本,而另一个以预测其意图类别。由发电机获得的更可靠的标记数据大大提高了意图分类任务的性能。两个航空旅行信息系统(ATIS),以及我们对保险业的销售机器人对话系统上大量的实验证明,我们的Cseq-GaN实现了与文本分类的其他国家的技术方法有竞争力的分类精度。

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