FIELD: information technology.
SUBSTANCE: calculation system for creation a new article of the electronic morphological dictionary of natural language performs the identity token in the text body, applying to at least one token from the regulation paradigm morphological description generation other inflections for basic validation of at least one of the hypotheses, evaluation of at least one hypothesis to get the value of evaluations by checking the occurrence in the corpus texts the rest generated inflections to identify the best hypothesis, adding inflectional paradigms and grammatical meanings of the basic form of the token based on the best proven hypotheses, adding a new article in the electronic morphological dictionary.
EFFECT: improving the accuracy of text processing in a natural language.
24 cl, 3 dwg
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Authors
Dates
2017-12-20—Published
2014-09-18—Filed