In theoretical linguistics, a generative grammar refers to a particular approach to the study of syntax. A generative grammar of a language attempts to give a set of rules that will correctly predict which combinations of words will form grammatical sentences. In most approaches to generative grammar, the rules will also predict the morphology of a sentence. [citation needed] Generative grammar arguably originates in the work of Noam Chomsky, beginning in the late 1950s. However, Chomsky has said that the first generative grammar in the modern sense was Panini’s Sanskrit grammar.
1] Chomsky also acknowledges other historical antecedents. [2] Early versions of Chomsky’s theory were called transformational grammar, and this term is still used as a general term that includes his subsequent theories. There are a number of competing versions of generative grammar currently practiced within linguistics. Chomsky’s current theory is known as the Minimalist program. Other prominent theories include or have included dependency grammar, head-driven phrase structure grammar, lexical functional grammar, categorial grammar, relational grammar, link grammar, and tree-adjoining grammar. citation needed] Chomsky has argued that many of the properties of a generative grammar arise from an “innate” universal grammar. Proponents of generative grammar have argued that most grammar is not the result of communicative function and is not simply learned from the environment (see poverty of the stimulus argument).
The Essay on Positive vs Normative Accounting Theory
Unlike normative theory, positive theory is designed to explore current Notice how each paragraph has one main topic area, new topic areas should mean a new paragraph. Provide in? text references where appropriate accounting practice not to prescribe or advise which methods should be used. Normative accounting theories dismiss conventional historic cost accounting as being meaningless or not ...
In this respect, generative grammar takes a point of view different from cognitive grammar, functional, and behaviorist theories. [citation needed]
Most versions of generative grammar characterize sentences as either grammatically correct (also known as well formed) or not. The rules of a generative grammar typically function as an algorithm to predict grammaticality as a discrete (yes-or-no) result. In this respect, it differs from stochastic grammar, which considers grammaticality as a probabilistic variable. However, some work in generative grammar (e. g. recent work by Joan Bresnan) uses stochastic versions of optimality theory. [citation needed]