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A Study on Machine Learning Approaches for Named Entity Recognition

机译:基于机器学习的命名实体识别方法研究

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Natural Language Processing (NLP) is one of the sub-parts of Artificial Intelligence which normally focuses on empowering computers to understand and operate on human languages and to get computers closer towards understanding a language as a human does. Named Entity Recognition (NER) is core of NLP systems. NER is a process of automatic identification of named entities in a given text or document. Named entities are real world objects or in general named entities are proper nouns like name of person, location, date and time expression etc. The recognition and extraction of real named entity is very important for solving difficulties in many research areas like Question Answering and Summarization Systems, Information Extraction, Machine Learning, Semantic Web Search and Bio-informatics, Video Annotation and many more. In this paper the major focus is given on comprehending different types of NER and approaches applied for NER especially different machine learning models used for identification of Named Entities.
机译:自然语言处理(NLP)是人工智能的子部分之一,通常专注于使计算机能够理解和操作人类语言,并使计算机更接近于像人类一样理解语言。命名实体识别(NER)是NLP系统的核心。 NER是自动识别给定文本或文档中命名实体的过程。命名实体是现实世界中的对象,或者通常来说,命名实体是专有名词,例如人名,位置,日期和时间表达等。识别和提取真实命名实体对于解决诸如问答和摘要之类的许多研究领域中的难题非常重要。系统,信息提取,机器学习,语义Web搜索和生物信息学,视频注释等等。本文主要关注于理解不同类型的NER和应用于NER的方法,尤其是用于识别命名实体的不同机器学习模型。

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