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Feature-enriched word embeddings for named entity recognition in open-domain conversations

机译:功能丰富的单词嵌入,用于开放域对话中的命名实体识别

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Named entity recognition (NER) from open-domain conversation is challenging due to the informality of spoken language. Instead of increasing the size of labeled data, which is expensive and time-consuming, word embeddings learned from unlabeled data have been used by NER models to handle data sparsity. We propose a novel method for training the word embeddings specifically for the NER task. We show that our task-specific word embeddings outperform task-independent word embeddings when used as features of NER method.
机译:由于口语的非正式性,来自开放域对话的命名实体识别(NER)具有挑战性。 NER模型已使用从未标记的数据中学习的词嵌入技术来处理数据稀疏性,而不是增加昂贵且费时的标记数据的大小。我们提出了一种新的方法来专门针对NER任务训练单词嵌入。我们证明,当用作NER方法的功能时,特定于任务的单词嵌入优于独立于任务的单词嵌入。

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