CLUEbenchmark/CLUENER2020
CLUENER2020 中文细粒度命名实体识别 Fine Grained Named Entity Recognition
This project helps you automatically identify and categorize specific types of information within Chinese text. You provide raw Chinese text, and it outputs the text with important entities like names, locations, company names, or job titles highlighted and labeled. This is designed for data analysts, researchers, or anyone needing to extract structured insights from large volumes of Chinese documents.
1,523 stars. No commits in the last 6 months.
Use this if you need to quickly and accurately find and classify fine-grained entities such as addresses, book titles, company names, or people's names in Chinese text.
Not ideal if you are working with languages other than Chinese or if you only need very broad, general entity categories.
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Nov 21, 2022
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