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Named entity recognition on Indonesian Twitter posts using long short-term memory networks

机译:使用长期短期记忆网络在印尼Twitter帖子上命名实体识别

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The task of Named-Entity Recognition (NER) can support the higher-level tasks such as question answering, text summarization, and information retrieval. This work views NER on Indonesian Twitter posts as a sequence labeling problem using supervised machine learning approach. The architecture used is Long Short-Term Memory Networks (LSTMs), with word embedding and POS tag as the model features. As the result, our model can give a performance with an F1 score of 77.08%.
机译:命名实体识别(NER)任务可以支持更高级别的任务,例如问题解答,文本摘要和信息检索。这项工作使用监督式机器学习方法将印度尼西亚Twitter帖子上的NER视为序列标签问题。所使用的体系结构是长短期存储网络(LSTM),其中以单词嵌入和POS标签为模型特征。结果,我们的模型可以提供77.08 \%的F1评分。

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