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Deep Neural Architecture with Character Embedding for Semantic Frame Detection

机译:具有字符嵌入的深度神经结构,用于语义帧检测

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Semantic frame detection has been extensively used for language understanding tasks, such as in dialogue systems or more recently, in Chat-bots. Traditionally, this involves two separate tasks: the detection of the semantic frame (i.e. intent detection), and the detection of frame elements (i.e. slot-filling). Recent efforts have attempted to combine the two tasks using recurrent neural networks. However, there is still room for improvement as these efforts do not efficiently model temporal dependencies. In this paper we propose a deep neural network architecture that uses long-short term memory (RNN-LSTM) with character embedding for joint modeling of intent detection and slot filling. Our results show significant improvement in slot-filling and intent detection at the sentence level over state-of-the-art semantic frame detection methods.
机译:语义帧检测已广泛用于语言理解任务,例如在对话系统中或最近在聊天机器人中。传统上,这涉及两个单独的任务:检测语义帧(即意图检测),以及帧元素的检测(即插槽填充)。最近的努力试图使用经常性神经网络来结合两项任务。但是,随着这些努力没有有效地模拟时间依赖性,仍有改进的余地。在本文中,我们提出了一种深度神经网络架构,该架构利用长短短期内存(RNN-LSTM),具有用于联合建模的目的检测和槽填充的角色嵌入。我们的结果显示出在最先进的语义帧检测方法中句子水平的插槽填充和意图检测的显着改善。

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