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Recurrent Support Vector Machines For Slot Tagging In Spoken Language Understanding

机译:用于口语语言理解的插槽标记的经常性支持向量机

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We propose recurrent support vector machine (RSVM) for slot tagging. This model is a combination of the recurrent neural network (RNN) and the structured support vector machine. RNN extracts features from the input sequence. The structured support vector machine uses a sequence-level discriminative objective function. The proposed model therefore combines the sequence representation capability of an RNN with the sequence-level discriminative objective. We have observed new state-of-the-art results on two benchmark datasets and one private dataset. RSVM obtained statistical significant 4% and 2% relative average F1 score improvement on ATIS dataset and Chunking dataset, respectively. Out of eight domains in Cortana live log dataset, RSVM achieved F1 score improvement on seven domains. Experiments also show that rsvm significantly speeds up the model training by skipping the weight updating for non-support vector training samples, compared against training using RNN with CRF or minimum cross-entropy objectives.
机译:我们提出了用于插槽标记的重复支持向量机(RSVM)。该模型是经常性神经网络(RNN)和结构化支持向量机的组合。 RNN从输入序列中提取功能。结构化支持向量机使用序列级别的鉴别目标函数。因此,所提出的模型将RNN的序列表示能力与序列级鉴别物目标相结合。我们在两个基准数据集和一个私有数据集中观察到新的最先进结果。 RSVM分别获得统计统计显着显着高4%和2%的相对平均F1分别对ATIS数据集和散布数据集进行分数改进。在Cortana Live日志数据集中的八个域中,RSVM在七个域实现了F1分数改进。实验还表明,RSVM通过跳过非支持向量培训样本的重量更新,与使用CRF或最小跨熵目标的训练相比,RSVM通过跳过重量更新来显着加速模型训练。

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