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<title>Machine Learning Methods for Named Entity Recognition with Limited Resource</title>
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<description/>
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<dc:date>2026-04-16T16:55:00Z</dc:date>
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<title>Machine Learning Methods for Named Entity Recognition with Limited Resource</title>
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<description>Machine Learning Methods for Named Entity Recognition with Limited Resource
Saha, Sujan Kumar
A named entity (NE) denotes a noun or noun phrase referring to a name belonging to a&#13;
predefined category like person, location and organization. The task of identifying and&#13;
categorizing named entities from text is known as named entity recognition (NER). NEs&#13;
are often the pivotal as well as the most information-bearing elements of a text, and NER&#13;
systems find application in a number of tasks like information extraction, text mining&#13;
and machine translation.
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<dc:date>2010-01-01T00:00:00Z</dc:date>
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