Ensemble Learning for Low Resources Prepositional Phrase Attachment
نویسندگان
چکیده
Prepositional phrase attachment is a major disambiguation problem when it’s about parsing natural language, for many languages. In this paper a low resources policy is proposed using supervised machine learning algorithms in order to resolve the disambiguation problem of prepositional phrase attachment in Modern Greek. It is a first attempt to resolve prepositional phrase attachment in Modern Greek, without using sophisticated syntactic annotation and semantic resources, but by employing sophisticated learning techniques i.e ensembles of classifiers.
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