Data processing: speech signal processing – linguistics – language – Linguistics – Natural language
Reexamination Certificate
2011-01-04
2011-01-04
Vital, Pierre M (Department: 2156)
Data processing: speech signal processing, linguistics, language
Linguistics
Natural language
C704S001000, C704S010000
Reexamination Certificate
active
07865356
ABSTRACT:
A method of proper name recognition includes classifying each word of a word string with a tag indicating a proper name entity category or a non-named entity category, and correcting the tag of a boundary word of the word string.
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Weng Fuliang
Zhao Lin
Kenyon & Kenyon LLP
Raab Christopher J
Robert & Bosch GmbH
Vital Pierre M
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