基于CRF的生物医学命名实体识别的机器学习方法

U. Kanimozhi, D. Manjula
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引用次数: 7

摘要

网络上可获得的生物医学文本信息的数量越来越多。考虑到生物医学文献和数据库中文档的大小,很难提取出用户感兴趣的正确信息。人类几乎不可能处理所有这些数据,甚至计算机也很难提取信息,因为它们不是以结构化格式存储的。识别命名实体并对其进行分类有助于从非结构化文本文档中提取有用信息。本文提出了一种利用生物医学知识的新方法,通过疾病词典的精确匹配和UMLS语义类型过滤增加语义概念特征,以提高机器学习对人类疾病命名实体的识别。通过将概念语义类型工程到特征集中,我们证明了领域知识对基于机器学习的疾病NER的重要性。背景知识丰富了命名实体的表示,有助于消除上下文中术语的歧义,从而提高了NER的整体性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A CRF Based Machine Learning Approach for Biomedical Named Entity Recognition
The amount of biomedical textual information available in the web becomes more and more. It is very difficult to extract the right information that users are interested in considering the size of documents in the biomedical literatures and databases. It is nearly impossible for human to process all these data and it is even difficult for computers to extract the information since it is not stored in structured format. Identifying the named entities and classifying them can help in extracting the useful information in the unstructured text documents. This paper presents a new method of utilizing biomedical knowledge by both exact matching of disease dictionary and adding semantic concept feature through UMLS semantic type filtering, in order to improve the human disease named entity recognition by machine learning. By engineering the concept semantic type into feature set, we demonstrate the importance of domain knowledge on machine learning based disease NER. The background knowledge enriches the representation of named entity and helps to disambiguate terms in the context thereby improves the overall NER performance.
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