Abstract

Automatically acquiring semantic verb classes from corpora is a challenging task, especially with no existing treebank. Building a high-performing parser for a language is still crucially depends on the existence of large, in-domain texts as training data. While previous work has focused primarily on major languages, how to extend these results to other languages is the way to avoid working start from scratch. In general, a large monolingual corpus in a resource-rich source language labeled with lexico-syntactic information, and a very limited bilingual corpus are available. This paper addresses the problem of verb classification automatically in Tibetan using bilingual lexicon and translation information.

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