Fine Grained Classification of Named Entities In Wikipedia
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چکیده
Fine Grained Classification of Named Entities In Wikipedia Maksim Tkachenko, Alexander Ulanov, Andrey Simanovsky
منابع مشابه
Classifying Articles in Chinese Wikipedia with Fine-Grained Named Entity Types
Named entity classification of Wikipedia articles is a fundamental research area that can be used to automatically build large-scale corpora of named entity recognition or to support other entity processing, such as entity linking, as auxiliary tasks. This paper describes a method of classifying named entities in Chinese Wikipedia with fine-grained types. We considered multi-faceted information...
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تاریخ انتشار 2010