Adapter for allowing both online and offline training of a...

Data processing: speech signal processing – linguistics – language – Speech signal processing – Application

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C704S008000, C704S237000, C704S256200, C704S258000, C706S015000

Reexamination Certificate

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07624020

ABSTRACT:
An adapter for a text to text training. A main corpus is used for training, and a domain specific corpus is used to adapt the main corpus according to the training information in the domain specific corpus. The adaptation is carried out using a technique that may be faster than the main training. The parameter set from the main training is adapted using the domain specific part.

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