Dependency Parsing domain adaptation involves adapting a dependency parser, trained on an annotated corpus from a given domain (e.g., newspaper articles), to work on a different target domain (e.g., legal doc- uments), given only an unannotated corpus from the target domain. We present a shift/reduce dependency parser that can handle unlabeled sentences in its training set using a transductive SVM as its action selection classifier. We illustrate the the experiments we per- formed with this parser on a domain adap- tation task for the Italian language.

Dependency Parsing domain adaptation using transductive SVM

Antonio Valerio Miceli-Barone
Primo
;
Giuseppe Attardi
Co-primo
2012-01-01

Abstract

Dependency Parsing domain adaptation involves adapting a dependency parser, trained on an annotated corpus from a given domain (e.g., newspaper articles), to work on a different target domain (e.g., legal doc- uments), given only an unannotated corpus from the target domain. We present a shift/reduce dependency parser that can handle unlabeled sentences in its training set using a transductive SVM as its action selection classifier. We illustrate the the experiments we per- formed with this parser on a domain adap- tation task for the Italian language.
2012
978-1-937284-19-0
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11568/904507
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