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Dialogue Intent Classification with Long Short-Term Memory Networks

机译:对话意图分类,短期内存网络

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Dialogue intent analysis plays an important role for dialogue systems. In this paper, we present a deep hierarchical LSTM model to classify the intent of a dialogue utterance. The model is able to recognize and classify user's dialogue intent in an efficient way. Moreover, we introduce a memory module to the hierarchical LSTM model, so that our model can utilize more context information to perform classification. We evaluate the two proposed models on a real-world conversational dataset from a Chinese famous e-commerce service. The experimental results show that our proposed model outperforms the baselines.
机译:对话意图分析对对话系统起着重要作用。在本文中,我们提出了一个深层次的LSTM模型,以分类对话话语的意图。该模型能够以有效的方式识别和分类用户对话框意图。此外,我们将内存模块引入分层LSTM模型,以便我们的模型可以利用更多上下文信息来执行分类。我们从中国着名的电子商务服务评估了在真实的对话数据集中的两个拟议模型。实验结果表明,我们所提出的模型优于基线。

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