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91.304 Foundations of (Theoretical) Computer Science

91.304 Foundations of (Theoretical) Computer Science. Chapter 1 Lecture Notes (Section 1.2: NFA’s) David Martin dm@cs.uml.edu With some modifications by Prof. Karen Daniels, Fall 2009 Slides also added from http://cis.k.hosei.ac.jp/~yukita/ in some places.

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91.304 Foundations of (Theoretical) Computer Science

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  1. 91.304 Foundations of (Theoretical) Computer Science Chapter 1 Lecture Notes (Section 1.2: NFA’s) David Martin dm@cs.uml.edu With some modifications by Prof. Karen Daniels, Fall 2009 Slides also added from http://cis.k.hosei.ac.jp/~yukita/ in some places. This work is licensed under the Creative Commons Attribution-ShareAlike License. To view a copy of this license, visit http://creativecommons.org/licenses/by-sa/2.0/ or send a letter to Creative Commons, 559 Nathan Abbott Way, Stanford, California 94305, USA.

  2. Nondeterministic Finite Automata • Will relax two of these DFA rules: • Each (state, char) input must produce exactly one (state) output • Must consume one character in order to advance state • The NFA accepts the input if there exists any way of reading the input that winds up in an accepting state at the end of the string • Otherwise it rejects the input

  3. Example: NFA N2 0,1 q3 q4 q1 q2 0,1 1 0,1 Let language A consist of all strings over {0,1} containing a 1 in the third position from the end. N2 recognizes A. Later we show a DFA equivalent to this NFA using construction of Thm. 1.39. variation on http://cis.k.hosei.ac.jp/~yukita/

  4. Nondetermistic Finite Automata • A nondeterministic finite automaton can be different from a deterministic one in that • for any input symbol, nondeterministic one can transit to more than one states. • epsilon transition (e), which “consumes” no input symbols • NFA and DFA stand for nondeterministic finite automaton and deterministic finite automaton, respectively. variation on http://cis.k.hosei.ac.jp/~yukita/

  5. NFA N1 0,1 0,1 q3 1 q4 q1 q2 1 0,e variation on http://cis.k.hosei.ac.jp/~yukita/

  6. Ways to think of NFAs • NFAs want to accept inputs and will always take the most advantageous alternative(s) • Because they will accept if there exists any way to get to an accepting state at the end of the string • The quickest way there may be just one of many ways, but it doesn’t matter

  7. Ways to think of NFAs a a a • fork() model • Input string is in a variable • fork() at every nondeterministic choice point • subprocess 1 (parent) follows first transition • subprocess 2 (child) follows second • subprocess 3 (child) follows third (if any), etc. • A process that can’t follow any transition calls exit() -- and gives up its ability to accept • A process that makes it through the whole string and is in an accepting state prints out “ACCEPT” • A single ACCEPT is enough

  8. Parallel world and NFA ... ... reject accept variation on http://cis.k.hosei.ac.jp/~yukita/

  9. Syntax of DFA (repeat) • A deterministic finite automaton (DFA) is a 5-tuple (Q,,delta,q0,F) such that • Q is a finite set of states •  is an alphabet • :Q£ !Q is the transition function • q02 Q is the start state • F µ Q is the set of accepting states • Usually these names are used, but others are possible as long as the role is clear

  10. Syntax of NFA • A nondeterministic finite automaton (NFA) is a 5-tuple (Q,, ,q0,F) such that • Q is a finite set of states •  is an alphabet • :Q£( [ {})!P(Q) is the transition function • q02 Q is the start state • F µ Q is the set of accepting states • Usually these names are used, but others are possible as long as the role is clear Note:  =  U {}

  11. 0,1 0,1 1 0,e 1 q3 q4 q1 q2 NFA N1 (again) Note the use of sets here in contrast to DFA. Board work: Resolve transition table with Figure 1.29. variation on http://cis.k.hosei.ac.jp/~yukita/

  12. The Subset Construction Theorem 1.39 For every NFA M1 there exists a DFA M2 such that L(M1) = L(M2). Corollary 1.40 A language is REGular if and only if some nondeterministic finite automaton recognizes it.

  13. The Subset Construction Proof: Let M1=(Q1,,1,init1,F1) be the NFA and define the DFA M2=(Q2,,2,init2,F2) as follows: • Q2 = P(Q1). • Each state of the DFA records the set of states that the NFA can simultaneously be in • Can compare DFA states for equality but also look "inside" the state name to find a set of NFA state names • Define2 : Q2 £! Q22 : P(Q1)£!P(Q1) by 2(S,a) = E1(1(S,a))Go to whatever states are reachable from the states in S and reading the character a Remember: in an NFA,1: Q1£ ! P(Q1) from def 1:P(Q1)£ ! P(Q1) extend to sets E1:P(Q1) !P(Q1) -closure

  14. The Subset Construction • init2 = E(init1) • F2={q 2 Q2 | q Å F1 ;}, in other wordsF2={S µ Q1 | S Å F1 ;} The effect is that the DFA knows all states that are reachable in the NFA after reading the string so far. If any one of them is accepting, then the current DFA state is accepting too, otherwise it's not. If you believe this then that's all it takes to see that the construction is correct. So, convince yourself with an example. QED

  15. Example: NFA N2 (again) 0,1 q3 q4 q1 q2 0,1 1 0,1 Let language A consist of all strings over {0,1} containing a 1 in the third position from the end. N2 recognizes A. No e’s in this example. variation on http://cis.k.hosei.ac.jp/~yukita/

  16. A DFA equivalent to N2 0 0 q010 q110 q000 q100 0 0 1 0 1 1 0 0 1 0 1 q011 q111 q001 q101 1 1 1 Board work: Start with all states, including unreachables. Variation on http://cis.k.hosei.ac.jp/~yukita/

  17. Example 1.21 NFA N4 to DFA 1 b a e a 3 2 a,b variation on http://cis.k.hosei.ac.jp/~yukita/

  18. unreachable unreachable {1,2} a,b a b {2} f {1} a,b b b a b a a {2,3} {1,2,3} {3} a {1,3} a b b The state diagram of D variation on http://cis.k.hosei.ac.jp/~yukita/

  19. Subset construction conclusion • Adding nondeterminism makes programs shorter but not able to do new things • Remember: regular languages are defined to be those "recognized by a DFA" • We now have a result that says that every language that is recognized by an NFA is regular too • So if you are asked to show that a language is regular, you can exhibit a DFA or NFA for it and rely on the subset construction theorem • Sometimes questions are specifically about DFAs or NFAs, though... pay attention to the precise wording

  20. Closure properties • The presence or absence of closure properties says something about how well a set tolerates an operation • Definition. Let S µ U be a set in some universe U and ¯ be an operation on elements of U. We say that S is closed under ¯ if applying ¯ to element(s) of S produces another element of S. • For example, if ¯ is a binary operation ¯:U£U!U, then we're saying that (8 x2S and y2S) x ¯ y 2 S

  21. ~ Not closed under ~ Closure properties illustrated U Applying the ¯ operation to elements of S never takes you ouside of S. S is closed with respect to ¯ This example shows unary operations ¯ ¯ ¯ ¯ ¯ S

  22. More examples • L1={x2{ 0,1 }* : |x| is a multiple of 3 } • is closed under string reversal and concatenation • L3={x2{0,1}*| the binary number x is a multiple of 3 } • is also closed under string reversal and concatenation, harder to see though • L4={x2{a,b}* | x contains an odd # of ‘b’s and an even # of ‘a’s} • is closed under string reversal • is not closed under string concatenation

  23. Closure: higher abstraction • We will usually be concerned with closure of language classes under language operations • Previous examples were closure of sets containing non-set elements under various familiar operations • We consider DFAs and NFAs to be programs and we want assurance that their outputs can be combined in desired ways just by manipulating their programs (like using one as a subroutine for the other) • Representative question: is REG closed under (language) concatenation?

  24. The regular operations • The regular operations on languages are • [ (union) • ¢ (concatenation) • ¤ (Kleene star) • The name "regular operations" is not that important • Too bad we use the word "regular" for so much • REG is closed under these regular operations • That's why they're called "regular" operations • This does not mean that each regular language is closed under each of these operations!

  25. The regular operations • REG is closed under union: Theorem 1.25 (using DFAs), Theorem 1.45 (using NFAs) • REG is closed under concatenation: Theorem 1.47 (NFAs) • REG is closed under ¤: Theorem 1.49 (NFAs) • Study these constructions!! • REG is also closed under complement and reversal (not in book)

  26. Theorem 1.45The class of regular languages is closed under the union operation. N N1 e e N2 variation on http://cis.k.hosei.ac.jp/~yukita/

  27. N2 N1 Theorem 1.47The class of regular languages is closed under the concatenation operation. N e e variation on http://cis.k.hosei.ac.jp/~yukita/

  28. N1 Theorem 1.24The class of regular languages is closed under the star operation. N e e e http://cis.k.hosei.ac.jp/~yukita/

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