Source-Language Dictionaries Help Non-Expert Users to Enlarge Target-Language Dictionaries for Machine Translation

LREC 2012 V{\'\i}ctor M. S{\'a}nchez-CartagenaMiquel Espl{\`a}-GomisJuan Antonio P{\'e}rez-Ortiz

In this paper, a previous work on the enlargement of monolingual dictionaries of rule-based machine translation systems by non-expert users is extended to tackle the complete task of adding both source-language and target-language words to the monolingual dictionaries and the bilingual dictionary. In the original method, users validate whether some suffix variations of the word to be inserted are correct in order to find the most appropriate inflection paradigm... (read more)

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