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1 Module 15 FSA’s –Defining FSA’s –Computing with FSA’s Defining L(M) –Defining language class LFSA –Comparing LFSA to set of solvable languages (REC)
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2 Finite State Automata New Computational Model
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3 Tape We assume that you have already seen FSA’s in CSE 260 –If not, review material in reference textbook Only data structure is a tape –Input appears on tape followed by a B character marking the end of the input –Tape is scanned by a tape head that starts at leftmost cell and always scans to the right
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4 Data type/States The only data type for an FSA is char The instructions in an FSA are referred to as states Each instruction can be thought of as a switch statement with several cases based on the char being scanned by the tape head
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5 Example program 1 switch(current tape cell) { case a: goto 2 case b: goto 2 case B: return yes } 2 switch (current tape cell) { case a: goto 1 case b: goto 1 case B: return no; }
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6 New model of computation FSA M=(Q, ,q 0,A, ) –Q = set of states = {1,2} – = character set = {a,b} don’t need B as we see below –q 0 = initial state = 1 –A = set of accepting (final) states = {1} A is the set of states where we return yes on B Q-A is set of states that return no on B – = state transition function 1 switch(current tape cell) { case a: goto 2 case b: goto 2 case B: return yes } 2 switch (current tape cell) { case a: goto 1 case b: goto 1 case B: return no; }
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7 Textual representations of * 1 switch(current tape cell) { case a: goto 2 case b: goto 2 case B: return yes } 2 switch (current tape cell) { case a: goto 1 case b: goto 1 case B: return no; } 1 2 ab 11 22 (1,a) = 2, (1,b)=2, (2,a)=1, (2,b) = 1 {(1,a,2), (1,b,2), (2,a,1), (2,b,1)}
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8 Transition diagrams 1 2 a,b 1 switch(current tape cell) { case a: goto 2 case b: goto 2 case B: return yes } 2 switch (current tape cell) { case a: goto 1 case b: goto 1 case B: return no; } Note, this transition diagram represents all 5 components of an FSA, not just the transition function
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9 Exercise * FSA M = (Q, , q 0, A, ) –Q = {1, 2, 3} – = {a, b} –q 0 = 1 –A = {2,3} – : { (1,a) = 1, (1,b) = 2, (2,a)= 2, (2,b) = 3, (3,a) = 3, (3,b) = 1} Draw this FSA as a transition diagram
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10 Transition Diagram 1 2 3 a a a b b b
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11 Computing with FSA’s
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12 Computation Example * 1 2 3 a a a b b b Input: aabbaa
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13 Computation of FSA’s in detail A computation of an FSA M on an input x is a complete sequence of configurations We need to define –Initial configuration of the computation –How to determine the next configuration given the current configuration –Halting or final configurations of the computation
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14 Given an FSA M and an input string x, what is the initial configuration of the computation of M on x? –(q 0,x) –Examples x = aabbaa (1, aabbaa) x = abab (1, abab) x = (1, ) Initial Configuration 1 2 3 a a a b b b FSA M
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15 (1, aabbaa) |- M (1, abbaa) –config 1 “yields” config 2 in one step using FSA M (1,aabbaa) |- M (2, baa) –config 1 “yields” config 2 in 3 steps using FSA M (1, aabbaa) |- M (2, baa) –config 1 “yields” config 2 in 0 or more steps using FSA M Comment: –|- M determined by transition function –There must always be one and only one next configuration If not, M is not an FSA Definition of |- M 1 2 3 a a a b b b 3 FSA M *
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16 Halting configuration –(q, ) –Examples (1, ) (3, ) Accepting Configuration –State in halting configuration is in A Rejecting Configuration –State in halting configuration is not in A Halting Configurations * 1 2 3 a a a b b b FSA M
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17 Two possibilities for M running on x –M accepts x M accepts x iff the computation of M on x ends up in an accepting configuration (q 0, x) |- M (q, ) where q is in A –M rejects x M rejects x iff the computation of M on x ends up in a rejecting configuration (q 0, x) |- M (q, ) where q is not in A –M does not loop or crash on x FSA M on x * b b b a a a FSA M * *
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18 –For the following input strings, does M accept or reject? aa aabba aab babbb Examples * b b b a a a FSA M
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19 Notation from the book (q, c) = p k (q, x) = p –k is the length of x * (q, x) = p Examples – (1, a) = 1 – (1, b) = 2 – 4 (1, abbb) = 1 – * (1, abbb) = 1 – (2, baaaaa) = 3 Definition of * (q, x) 1 2 3 a a a b b b FSA M
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20 L(M) or Y(M) –The set of strings M accepts Basically the same as Y(P) from previous unit –We say that M accepts/decides/recognizes/solves L(M) Remember an FSA will not loop or crash –What is L(M) (or Y(M)) for the FSA M above? N(M) –Rarely used, but it is the set of strings M rejects LFSA –L is in LFSA iff there exists an FSA M such that L(M) = L. L(M) and LFSA * b b b a a a FSA M
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21 LFSA Unit Overview Study limits of LFSA –Understand what languages are in LFSA Develop techniques for showing L is in LFSA –Understand what languages are not in LFSA Develop techniques for showing L is not in LFSA Prove Closure Properties of LFSA Identify relationship of LFSA to other language classes
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22 Comparing language classes Showing LFSA is a subset of REC, the set of solvable languages
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23 LFSA subset REC Proof –Let L be an arbitrary language in LFSA –Let M be an FSA such that L(M) = L M exists by definition of L in LFSA –Construct C ++ program P from FSA M –Argue P solves L –There exists a C ++ program P which solves L –L is solvable
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24 Visualization LFSA REC FSA’s C ++ Programs L L M P Let L be an arbitrary language in LFSA Let M be an FSA such that L(M) = L M exists by definition of L in LFSA Construct C++ program P from FSA M Argue P solves L There exists a program P which solves L L is solvable
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25 Construction * The construction is an algorithm which solves a problem with a program as input –Input to A: FSA M –Output of A: C ++ program P such that P solves L(M) –How do we do this? Construction Algorithm FSA M Program P
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26 Comparing computational models * The previous slides show one method for comparing the relative power of two different computational models –Computational model CM 1 is at least as general or powerful as computational model CM 2 if Any program P 2 from computational model CM 2 can be converted into an equivalent program P 1 in computational model CM 1. –Question: How can we show two computational models are equivalent?
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