Weighted linear bilingual word alignment model

Data processing: speech signal processing – linguistics – language – Linguistics – Translation machine

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C704S001000, C704S003000, C704S004000, C704S005000

Reexamination Certificate

active

07957953

ABSTRACT:
A weighted linear word alignment model linearly combines weighted features to score a word alignment for a bilingual, aligned pair of text fragments. The features are each weighted by a feature weight. One of the features is a word association metric, which may be generated from surface statistics.

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