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This first division, based on categorization from A Comprehensive Grammar of the English Language, includes three categories: Central determiners occur after any predeterminers and before any postdeterminers; they tend to function as determinatives regardless of the presence or absence of other determiners in the noun phrase.
Determiners may be predeterminers, central determiners or postdeterminers, based on the order in which they can occur. [citation needed] For example, "all my many very young children" uses one of each. "My all many very young children" is not grammatically correct because a central determiner cannot precede a predeterminer.
a; a few; a little; all; an; another; any; anybody; anyone; anything; anywhere; both; certain (also adjective) each; either; enough; every; everybody; everyone ...
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The English word case used in this sense comes from the Latin casus, which is derived from the verb cadere, "to fall", from the Proto-Indo-European root ḱh₂d-. [8] The Latin word is a calque of the Greek πτῶσις, ptôsis, lit. "falling, fall". [9] The sense is that all other cases are considered to have "fallen" away from the nominative.
Word2vec is a technique in natural language processing (NLP) for obtaining vector representations of words. These vectors capture information about the meaning of the word based on the surrounding words. The word2vec algorithm estimates these representations by modeling text in a large corpus.