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Exploring Named Entity Recognition As an Auxiliary Task for Slot Filling in Conversational Language Understanding

机译:探索命名实体识别作为对会话语言理解的插槽填充的辅助任务

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Slot filling is a crucial task in the Natural Language Understanding (NLU) component of a dialogue system. Most approaches for this task rely solely on the domain-specific datasets for training. We propose a joint model of slot filling and Named Entity Recognition (NER) in a multi-task learning (MTL) setup. Our experiments on three slot filling datasets show that using NER as an auxiliary task improves slot filling performance and achieve competitive performance compared with state-of-the-art. In particular, NER is effective when supervised at the lower layer of the model. For low-resource scenarios, we found that MTL is effective for one dataset.
机译:插槽填充是对话系统的自然语言理解(NLU)组成部分的重要任务。大多数此次任务的方法都仅依赖于特定于域的数据集进行培训。我们在多任务学习(MTL)设置中提出了一个插槽填充和命名实体识别(ner)的联合模型。我们在三个时隙填充数据集上的实验表明,使用NER作为辅助任务,可以提高插槽填充性能,与最先进的竞争性能提高。特别是,当在模型的下层监督时,ner是有效的。对于低资源场景,我们发现MTL对一个数据集有效。

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