Formal grammar

In formal language theory, a grammar (when the context is not given, often called a formal grammar for clarity) is a set of production rules for strings in a formal language. The rules describe how to form strings from the language's alphabet that are valid according to the language's syntax. A grammar does not describe the meaning of the strings or what can be done with them in whatever context—only their form.

Formal language theory, the discipline which studies formal grammars and languages, is a branch of applied mathematics. Its applications are found in theoretical computer science, theoretical linguistics, formal semantics, mathematical logic, and other areas.

A formal grammar is a set of rules for rewriting strings, along with a "start symbol" from which rewriting starts. Therefore, a grammar is usually thought of as a language generator. However, it can also sometimes be used as the basis for a "recognizer"a function in computing that determines whether a given string belongs to the language or is grammatically incorrect. To describe such recognizers, formal language theory uses separate formalisms, known as automata theory. One of the interesting results of automata theory is that it is not possible to design a recognizer for certain formal languages.[1] Parsing is the process of recognizing an utterance (a string in natural languages) by breaking it down to a set of symbols and analyzing each one against the grammar of the language. Most languages have the meanings of their utterances structured according to their syntaxa practice known as compositional semantics. As a result, the first step to describing the meaning of an utterance in language is to break it down part by part and look at its analyzed form (known as its parse tree in computer science, and as its deep structure in generative grammar).

Introductory example

A grammar mainly consists of a set of rules for transforming strings. (If it only consisted of these rules, it would be a semi-Thue system.) To generate a string in the language, one begins with a string consisting of only a single start symbol. The production rules are then applied in any order, until a string that contains neither the start symbol nor designated nonterminal symbols is produced. A production rule is applied to a string by replacing one occurrence of the production rule's left-hand side in the string by that production rule's right-hand side (cf. the operation of the theoretical Turing machine). The language formed by the grammar consists of all distinct strings that can be generated in this manner. Any particular sequence of production rules on the start symbol yields a distinct string in the language. If there are essentially different ways of generating the same single string, the grammar is said to be ambiguous.

For example, assume the alphabet consists of a and b, the start symbol is S, and we have the following production rules:

1. S \rightarrow aSb
2. S \rightarrow ba

then we start with S, and can choose a rule to apply to it. If we choose rule 1, we obtain the string aSb. If we then choose rule 1 again, we replace S with aSb and obtain the string aaSbb. If we now choose rule 2, we replace S with ba and obtain the string aababb, and are done. We can write this series of choices more briefly, using symbols: S \Rightarrow aSb \Rightarrow aaSbb \Rightarrow aababb. The language of the grammar is then the infinite set \{a^nbab^n | n \ge 0 \} = \{ba, abab, aababb, aaababbb, \dotsc \}, where a^k is a repeated k times (and n in particular represents the number of times production rule 1 has been applied).

Formal definition

Main article: Unrestricted grammar

The syntax of grammars

In the classic formalization of generative grammars first proposed by Noam Chomsky in the 1950s,[2][3] a grammar G consists of the following components:

(\Sigma \cup N)^{*} N (\Sigma \cup N)^{*} \rightarrow (\Sigma \cup N)^{*}
where {*} is the Kleene star operator and \cup denotes set union. That is, each production rule maps from one string of symbols to another, where the first string (the "head") contains an arbitrary number of symbols provided at least one of them is a nonterminal. In the case that the second string (the "body") consists solely of the empty string i.e., that it contains no symbols at all it may be denoted with a special notation (often \Lambda, e or \epsilon) in order to avoid confusion.

A grammar is formally defined as the tuple (N, \Sigma, P, S). Such a formal grammar is often called a rewriting system or a phrase structure grammar in the literature.[4][5]

The semantics of grammars

The operation of a grammar can be defined in terms of relations on strings:

Note that the grammar G = (N, \Sigma, P, S) is effectively the semi-Thue system (N \cup \Sigma, P), rewriting strings in exactly the same way; the only difference is in that we distinguish specific nonterminal symbols which must be rewritten in rewrite rules, and are only interested in rewritings from the designated start symbol S to strings without nonterminal symbols.

Example

For these examples, formal languages are specified using set-builder notation.

Consider the grammar G where N = \left \{S, B\right \}, \Sigma = \left \{a, b, c\right \}, S is the start symbol, and P consists of the following production rules:

1. S \rightarrow aBSc
2. S \rightarrow abc
3. Ba \rightarrow aB
4. Bb \rightarrow bb

This grammar defines the language L(G) = \left \{ a^{n}b^{n}c^{n} | n \ge 1 \right \} where a^{n} denotes a string of n consecutive a's. Thus, the language is the set of strings that consist of 1 or more a's, followed by the same number of b's, followed by the same number of c's.

Some examples of the derivation of strings in L(G) are:

  • \boldsymbol{S} \underset 2 \Rightarrow \boldsymbol{abc}
  • \begin{align} \boldsymbol{S} & \underset 1 \Rightarrow \boldsymbol{aBSc} \\
& \underset 2 \Rightarrow aB\boldsymbol{abc}c \\
& \underset 3 \Rightarrow a\boldsymbol{aB}bcc \\
& \underset 4 \Rightarrow aa\boldsymbol{bb}cc 
\end{align}
  • \begin{align}
\boldsymbol{S} & \underset 1 \Rightarrow \boldsymbol{aBSc} \underset 1 \Rightarrow aB\boldsymbol{aBSc}c \\
& \underset 2 \Rightarrow aBaB\boldsymbol{abc}cc \\ 
& \underset 3 \Rightarrow a\boldsymbol{aB}Babccc \underset 3 \Rightarrow aaB\boldsymbol{aB}bccc \underset 3 \Rightarrow aa\boldsymbol{aB}Bbccc \\
& \underset 4 \Rightarrow aaaB\boldsymbol{bb}ccc \underset 4 \Rightarrow aaa\boldsymbol{bb}bccc \end{align}
(Note on notation: P \underset i \Rightarrow Q reads "String P generates string Q by means of production i", and the generated part is each time indicated in bold type.)

The Chomsky hierarchy

Main article: Chomsky hierarchy

When Noam Chomsky first formalized generative grammars in 1956,[2] he classified them into types now known as the Chomsky hierarchy. The difference between these types is that they have increasingly strict production rules and can express fewer formal languages. Two important types are context-free grammars (Type 2) and regular grammars (Type 3). The languages that can be described with such a grammar are called context-free languages and regular languages, respectively. Although much less powerful than unrestricted grammars (Type 0), which can in fact express any language that can be accepted by a Turing machine, these two restricted types of grammars are most often used because parsers for them can be efficiently implemented.[7] For example, all regular languages can be recognized by a finite state machine, and for useful subsets of context-free grammars there are well-known algorithms to generate efficient LL parsers and LR parsers to recognize the corresponding languages those grammars generate.

Context-free grammars

A context-free grammar is a grammar in which the left-hand side of each production rule consists of only a single nonterminal symbol. This restriction is non-trivial; not all languages can be generated by context-free grammars. Those that can are called context-free languages.

The language L(G) = \left \{ a^{n}b^{n}c^{n} | n \ge 1 \right \} defined above is not a context-free language, and this can be strictly proven using the pumping lemma for context-free languages, but for example the language \left \{ a^{n}b^{n} | n \ge 1 \right \} (at least 1 a followed by the same number of b's) is context-free, as it can be defined by the grammar G_2 with N=\left \{S\right \}, \Sigma=\left \{a,b\right \}, S the start symbol, and the following production rules:

1. S \rightarrow aSb
2. S \rightarrow ab

A context-free language can be recognized in O(n^3) time (see Big O notation) by an algorithm such as Earley's algorithm. That is, for every context-free language, a machine can be built that takes a string as input and determines in O(n^3) time whether the string is a member of the language, where n is the length of the string.[8] Deterministic context-free languages is a subset of context-free languages that can be recognized in linear time.[9] There exist various algorithms that target either this set of languages or some subset of it.

Regular grammars

In regular grammars, the left hand side is again only a single nonterminal symbol, but now the right-hand side is also restricted. The right side may be the empty string, or a single terminal symbol, or a single terminal symbol followed by a nonterminal symbol, but nothing else. (Sometimes a broader definition is used: one can allow longer strings of terminals or single nonterminals without anything else, making languages easier to denote while still defining the same class of languages.)

The language \left \{ a^{n}b^{n} | n \ge 1 \right \} defined above is not regular, but the language \left \{ a^{n}b^{m} \,| \, m,n \ge 1 \right \} (at least 1 a followed by at least 1 b, where the numbers may be different) is, as it can be defined by the grammar G_3 with N=\left \{S, A,B\right \}, \Sigma=\left \{a,b\right \}, S the start symbol, and the following production rules:

  1. S \rightarrow aA
  2. A \rightarrow aA
  3. A \rightarrow bB
  4. B \rightarrow bB
  5. B \rightarrow \epsilon

All languages generated by a regular grammar can be recognized in linear time by a finite state machine. Although, in practice, regular grammars are commonly expressed using regular expressions, some forms of regular expression used in practice do not strictly generate the regular languages and do not show linear recognitional performance due to those deviations.

Other forms of generative grammars

Many extensions and variations on Chomsky's original hierarchy of formal grammars have been developed, both by linguists and by computer scientists, usually either in order to increase their expressive power or in order to make them easier to analyze or parse. Some forms of grammars developed include:

Recursive grammars

Not to be confused with Recursive language.

A recursive grammar is a grammar which contains production rules that are recursive. For example, a grammar for a context-free language is left-recursive if there exists a non-terminal symbol A that can be put through the production rules to produce a string with A as the leftmost symbol.[14] All types of grammars in the Chomsky hierarchy can be recursive.

Analytic grammars

Though there is a tremendous body of literature on parsing algorithms, most of these algorithms assume that the language to be parsed is initially described by means of a generative formal grammar, and that the goal is to transform this generative grammar into a working parser. Strictly speaking, a generative grammar does not in any way correspond to the algorithm used to parse a language, and various algorithms have different restrictions on the form of production rules that are considered well-formed.

An alternative approach is to formalize the language in terms of an analytic grammar in the first place, which more directly corresponds to the structure and semantics of a parser for the language. Examples of analytic grammar formalisms include the following:

See also

References

  1. Meduna, Alexander (2014), Formal Languages and Computation: Models and Their Applications, CRC Press, p. 233, ISBN 9781466513457. For more on this subject, see undecidable problem.
  2. 1 2 Chomsky, Noam (Sep 1956). "Three models for the description of language" (PDF). IRE Transactions on Information Theory 2 (3): 113–124. doi:10.1109/TIT.1956.1056813. Archived from the original (PDF) on 2013-10-18. Retrieved 2007-06-18.
  3. Chomsky, Noam (1957). Syntactic Structures. The Hague: Mouton.
  4. Ginsburg, Seymour (1975). Algebraic and automata theoretic properties of formal languages. North-Holland. pp. 8–9. ISBN 0-7204-2506-9.
  5. Harrison, Michael A. (1978). Introduction to Formal Language Theory. Reading, Mass.: Addison-Wesley Publishing Company. p. 13. ISBN 0-201-02955-3.
  6. Sentential Forms, Context-Free Grammars, David Matuszek
  7. Grune, Dick & Jacobs, Ceriel H., Parsing Techniques A Practical Guide, Ellis Horwood, England, 1990.
  8. Earley, Jay, "An Efficient Context-Free Parsing Algorithm," Communications of the ACM, Vol. 13 No. 2, pp. 94-102, February 1970.
  9. Knuth, D. E. (July 1965). "On the translation of languages from left to right" (PDF). Information and Control 8 (6): 607–639. doi:10.1016/S0019-9958(65)90426-2. Retrieved 29 May 2011.
  10. Joshi, Aravind K., et al., "Tree Adjunct Grammars," Journal of Computer Systems Science, Vol. 10 No. 1, pp. 136-163, 1975.
  11. Koster , Cornelis H. A., "Affix Grammars," in ALGOL 68 Implementation, North Holland Publishing Company, Amsterdam, p. 95-109, 1971.
  12. Knuth, Donald E., "Semantics of Context-Free Languages," Mathematical Systems Theory, Vol. 2 No. 2, pp. 127-145, 1968.
  13. Knuth, Donald E., "Semantics of Context-Free Languages (correction)," Mathematical Systems Theory, Vol. 5 No. 1, pp 95-96, 1971.
  14. Notes on Formal Language Theory and Parsing, James Power, Department of Computer Science National University of Ireland, Maynooth Maynooth, Co. Kildare, Ireland.JPR02
  15. Birman, Alexander, The TMG Recognition Schema, Doctoral thesis, Princeton University, Dept. of Electrical Engineering, February 1970.
  16. Sleator, Daniel D. & Temperly, Davy, "Parsing English with a Link Grammar," Technical Report CMU-CS-91-196, Carnegie Mellon University Computer Science, 1991.
  17. Sleator, Daniel D. & Temperly, Davy, "Parsing English with a Link Grammar," Third International Workshop on Parsing Technologies, 1993. (Revised version of above report.)
  18. Ford, Bryan, Packrat Parsing: a Practical Linear-Time Algorithm with Backtracking, Master’s thesis, Massachusetts Institute of Technology, Sept. 2002.

External links

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