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Medical entity recognition using conditional random field (CRF)

机译:使用条件随机字段(CRF)的医疗实体识别

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The main objective of this research is to extract the health information, such as diseases, symptoms, treatments and drugs from the health online forum discussion. The task is referred as the medical entity recognition (MER) in which is defined as the Named Entity Recognition (NER) task to extract the information from the unstructured text and transform it into the structured forms in the health field. The approach for the task used in this research is a supervised learning using Conditional Random Field(CRF). We experimented several combinations of features in order to produce the results with the best accuracy. As the final result, this research obtained the best accuracy of precision 70.97%, recall 57.83%, and f-measures 63.69%. The best combination of features resulting the best overall result consists of the word itself, phrase, dictionary, the first preceding word and the word length.
机译:本研究的主要目标是从健康在线论坛讨论中提取疾病,症状,治疗和毒品等疾病信息。该任务称为医疗实体识别(MER),其中被定义为命名实体识别(ner)任务,以从非结构化文本中提取信息并将其转换为健康字段中的结构化表单。本研究中使用的任务的方法是使用条件随机字段(CRF)的监督学习。我们尝试了几种功能组合,以产生最佳准确性的结果。作为最终结果,该研究获得了精度70.97 %的最佳精度,调用57.83 %和F尺寸63.69 %。产生最佳整体结果的功能的最佳组合由单词本身,短语,字典,第一个前一词和单词长度组成。

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