Semantic For Text Processing
نویسنده
چکیده
If a computer was to read and understand a sentence such as "Women love bachelors" how would we describe the semantic process going on? A first type of answer would bring us directly in the world denoted by such a sentence: To this sentence corresponds a world situation of which one can give a formal representation for instance in set theoretical terms: there exist a certain state of affair, and a set of human beings, in which there is a subset of women and a subset of man in which the subset bachelor is itself contained and there exist a specific relation between the individuals of the subset of women with the individuals of the subset of bachelors. Hence interpreting the first sentence is thus to know the state of the world in which such a complex relation exist or for which this sentence is true.
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