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首页> 外文期刊>Journal of Advances in Information Technology >Natural Language Processing for Disaster Management Using Conditional Random Fields
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Natural Language Processing for Disaster Management Using Conditional Random Fields

机译:使用条件随机字段的灾难管理自然语言处理

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摘要

This research aims to extract name entity mentioned in unstructured text into a predefined category using Conditional Random Field (CRF) and bidirectional Long Short-Term Memory (LSTM). The experiments were conducted using one thousand words which extracted from the collection of twitter massage that collected in the topic related to natural disaster and classify into six classes of the output. There are three scenarios for testing and evaluate: CRF, CRF-optimize and a combination of LSTM and CRF. The results show that CRF-optimize parameter performance is given better than other model with 98.94%, 98.95% and 98.93% for precision, recall and F-measure respectively.
机译:该研究旨在使用条件随机字段(CRF)和双向短期内存(LSTM)提取非结构化文本中提到的名称实体。 使用一千个单词进行实验,该单词从与自然灾害相关的主题中收集的Twitter按摩中提取,并将其分为六种输出。 测试和评估有三种情况:CRF,CRF优化和LSTM和CRF的组合。 结果表明,CRF优化参数性能优于其他模型,分别优于98.94%,98.95%和98.93%,分别用于精度,召回和F测量。

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