FIELD: natural language processing.
SUBSTANCE: invention relates to the processing of natural language. In the method of creating natural language processing programs, build the semantic hierarchy of semantic entities independent of language, their properties, possible attributes, their relationships. Create a universal model that is relevant to an arbitrary language, including models of semantic, morphological, lexical and syntactic descriptions. Create the first program for processing an arbitrary natural language. Fill data with language-dependent models of morphological descriptions, lexical descriptions and syntactic descriptions of the essence of the indicated semantic description. Create a second program for processing natural language based on the semantic hierarchy, first universal program and language-dependent morphological descriptions, lexical descriptions, and syntactic descriptions. Use the second program to process natural language.
EFFECT: technical result is the improving of the accuracy of information interpretation and reducing the computational complexity at processing due to creation of universal technology of construction of applications for processing on the basis of the knowledge about the language and the whole world that is accumulated in the system.
20 cl, 18 dwg
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Authors
Dates
2018-07-26—Published
2014-01-23—Filed