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Abstract
Information extraction is to extract the required specific entity, event, relationship and other information from a large number of texts and store it in a structured form, which occupies an important position in the field of natural language. Information extraction helps people get the information they need efficiently, avoids a lot of complicated work, and saves manpower and material resources. In this paper, named entity recognition and so on are described and summarized in detail, as well as the prospect of information extraction.
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1 Key Laboratory of China’s Ethnic Languages and Information Technology of Ministry of Education, Northwest MinZu University, Lanzhou, China