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Contextual domain classification in spoken language understanding systems using recurrent neural network

机译:使用经常性神经网络的口语语言理解系统中的语境域分类

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In a multi-domain, multi-turn spoken language understanding session, information from the history often greatly reduces the ambiguity of the current turn. In this paper, we apply the recurrent neural network (RNN) to exploit contextual information for query domain classification. The Jordan-type RNN directly sends the vector of output distribution to the next query turn as additional input features to the convolutional neural network (CNN). We evaluate our approach against SVM with and without contextual features. On our contextually labeled dataset, we observe a 1.4% absolute (8.3% relative) improvement in classification error rate over the non-contextual SVM, and 0.9% absolute (5.5% relative) improvement over the contextual SVM.
机译:在多域,多转语言理解会话中,来自历史的信息通常大大降低了当前转弯的模糊性。在本文中,我们应用经常性神经网络(RNN)来利用查询域分类的上下文信息。 jordan型RNN直接将输出分布的向量发送到下一个查询,作为卷积神经网络(CNN)的额外输入功能。我们评估了我们对SVM的方法,而无需上下文特征。在我们的上下文标记的数据集上,我们在非上下文SVM上观察到的1.4%的绝对(相对)的分类错误率提高,对上下文SVM的0.9%的绝对(相对)的改进0.9%(相对的5.5%)改进。

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