Download presentation
Presentation is loading. Please wait.
Published byPhyllis Terry Modified over 9 years ago
2
1 Theory of Computation 計算理論
3
2 Instructor: 顏嗣鈞 E-mail: yen@ee.ntu.edu.tw Web: http://www.ee.ntu.edu.tw/~yen Time: 2:20-5:10 PM, Tuesday Place: BL 112 Office hours: by appointment Class web page: http://www.ee.ntu.edu.tw/~yen/courses/TOC-2006.htm
4
3 : Introduction to Automata Theory, Languages, and Computation John E. Hopcroft, Rajeev Motwani, Jeffrey D. Ullman, (2nd Ed. Addison-Wesley, 2001) textbook
5
4 1st Edition Introduction to Automata Theory, Languages, and Computation John E. Hopcroft, Jeffrey D. Ullman, (Addison-Wesley, 1979)
6
5 Grading HW : 0-20% Midterm exam.: 35-45% Final exam.: 45-55%
7
6 Why Study Automata Theory? Finite automata are a useful model for important kinds of hardware and software: Software for designing and checking digital circuits. Lexical analyzer of compilers. Finding words and patterns in large bodies of text, e.g. in web pages. Verification of systems with finite number of states, e.g. communication protocols.
8
7 Why Study Automata Theory? (2) The study of Finite Automata and Formal Languages are intimately connected. Methods for specifying formal languages are very important in many areas of CS, e.g.: Context Free Grammars are very useful when designing software that processes data with recursive structure, like the parser in a compiler. Regular Expressions are very useful for specifying lexical aspects of programming languages and search patterns.
9
8 Why Study Automata Theory? (3) Automata are essential for the study of the limits of computation. Two issues: What can a computer do at all? (Decidability) What can a computer do efficiently? (Intractability)
10
9 Applications Theoretical Computer Science Automata Theory, Formal Languages, Computability, Complexity … Compiler Prog. languages Comm. protocols circuits Pattern recognition Supervisory control Quantum computing Computer-AidedVerification...
11
10 Aims of the Course To familiarize you with key Computer Science concepts in central areas like - Automata Theory - Formal Languages - Models of Computation - Complexity Theory To equip you with tools with wide applicability in the fields of CS and EE, e.g. for - Complier Construction - Text Processing - XML
12
11 Fundamental Theme What are the capabilities and limitations of computers and computer programs? –What can we do with computers/programs? –Are there things we cannot do with computers/programs?
13
12 Studying the Theme How do we prove something CAN be done by SOME program? How do we prove something CANNOT be done by ANY program?
14
13 Example: The Halting Problem (1) Consider the following program. Does it terminate for all values of n 1? while (n > 1) { if even(n) { n = n / 2; } else { n = n * 3 + 1; }
15
14 Example: The Halting Problem (2) Not as easy to answer as it might first seem. Say we start with n = 7, for example: 7, 22, 11, 34, 17, 52, 26, 13, 40, 20, 10, 5, 16, 8, 4, 2, 1 In fact, for all numbers that have been tried (a lot!), it does terminate...... but in general?
16
15 Example: The Halting Problem (3) Then the following important undecidability result should perhaps not come as a total surprise: It is impossible to write a program that decides if another, arbitrary, program terminates (halts) or not. What might be surprising is that it is possible to prove such a result. This was first done by the British mathematician Alan Turing.
17
16 Our focus Automata Computability Complexity
18
17 Topics 1. Finite automata, Regular languages, Regular grammars: deterministic vs. nondeterministic, one-way vs. two-way finite automata, minimization, pumping lemma for regular sets, closure properties. 2. Pushdown automata, Context-free languages, Context-free grammars: deterministic vs. nondeterministic, one-way vs. two-way PDAs, reversal bounded PDAs, linear grammars, counter machines, pumping lemma for CFLs, Chomsky normal form, Greibach normal form, closure properties. 3.
19
18 Topics (cont’d) 3. Linear bounded automata, Context- sensitive languages, Context-sensitive grammars. 4. Turing machines, Recursively enumerable sets, Type 0 grammars: variants of Turing machines, halting problem, undecidability, Post correspondence problem, valid and invalid computations of TMs.
20
19 Topics (cont’d) 5. Basic recursive function theory 6. Basic complexity theory: Various resource bounded complexity classes, including NLOGSPACE, P, NP, PSPACE, EXPTIME, and many more. reducibility, completeness. 7. Advanced topics: Tree Automata, quantum automata, probabilistic automata, interactive proof systems, oracle computations, cryptography.
21
20 Who should take this course? YOU
22
21 Languages The terms language and word are used in a strict technical sense in this course: A language is a set of words. A word is a sequence (or string) of symbols. (or ) denotes the empty word, the sequence of zero symbols.
23
22 Symbols and Alphabets What is a symbol, then? Anything, but it has to come from an alphabet which is a finite set. A common (and important) instance is = {0, 1}. , the empty word, is never an symbol of an alphabet.
24
23 Computation CPU memory
25
24 CPU input memory output memory Program memory temporary memory
26
25 CPU input memory output memory Program memory temporary memory compute Example:
27
26 CPU input memory output memory Program memory temporary memory compute
28
27 CPU input memory output memory Program memory temporary memory compute
29
28 CPU input memory output memory Program memory temporary memory compute
30
29 Automaton CPU input memory output memory Program memory temporary memory Automaton
31
30 Different Kinds of Automata Automata are distinguished by the temporary memory Finite Automata: no temporary memory Pushdown Automata: stack Turing Machines: random access memory
32
31 input memory output memory temporary memory Finite Automaton Finite Automaton Example: Vending Machines (small computing power)
33
32 input memory output memory Stack Pushdown Automaton Pushdown Automaton Example: Compilers for Programming Languages (medium computing power) Push, Pop
34
33 input memory output memory Random Access Memory Turing Machine Turing Machine Examples: Any Algorithm (highest computing power)
35
34 Finite Automata Pushdown Automata Turing Machine Power of Automata Less powerMore power Solve more computational problems
36
35 Mathematical Preliminaries
37
36 Mathematical Preliminaries Sets Functions Relations Graphs Proof Techniques
38
37 A set is a collection of elements SETS We write
39
38 Set Representations C = { a, b, c, d, e, f, g, h, i, j, k } C = { a, b, …, k } S = { 2, 4, 6, … } S = { j : j > 0, and j = 2k for some k>0 } S = { j : j is nonnegative and even } finite set infinite set
40
39 A = { 1, 2, 3, 4, 5 } Universal Set: all possible elements U = { 1, …, 10 } 1 2 3 4 5 A U 6 7 8 9 10
41
40 Set Operations A = { 1, 2, 3 } B = { 2, 3, 4, 5} Union A U B = { 1, 2, 3, 4, 5 } Intersection A B = { 2, 3 } Difference A - B = { 1 } B - A = { 4, 5 } U A B A-B
42
41 A Complement Universal set = {1, …, 7} A = { 1, 2, 3 } A = { 4, 5, 6, 7} 1 2 3 4 5 6 7 A A = A
43
42 0 2 4 6 1 3 5 7 even { even integers } = { odd integers } odd Integers
44
43 DeMorgan’s Laws A U B = A B U A B = A U B U
45
44 Empty, Null Set: = { } S U = S S = S - = S - S = U = Universal Set
46
45 Subset A = { 1, 2, 3} B = { 1, 2, 3, 4, 5 } A B U Proper Subset:A B U A B
47
46 Disjoint Sets A = { 1, 2, 3 } B = { 5, 6} A B = U AB
48
47 Set Cardinality For finite sets A = { 2, 5, 7 } |A| = 3
49
48 Powersets A powerset is a set of sets Powerset of S = the set of all the subsets of S S = { a, b, c } 2 S = {, {a}, {b}, {c}, {a, b}, {a, c}, {b, c}, {a, b, c} } Observation: | 2 S | = 2 |S| ( 8 = 2 3 )
50
49 Cartesian Product A = { 2, 4 } B = { 2, 3, 5 } A X B = { (2, 2), (2, 3), (2, 5), ( 4, 2), (4, 3), (4, 5) } |A X B| = |A| |B| Generalizes to more than two sets A X B X … X Z
51
50 FUNCTIONS domain 1 2 3 a b c range f : A -> B A B If A = domain then f is a total function otherwise f is a partial function f(1) = a
52
51 RELATIONS R = {(x 1, y 1 ), (x 2, y 2 ), (x 3, y 3 ), …} x i R y i e. g. if R = ‘>’: 2 > 1, 3 > 2, 3 > 1 In relations x i can be repeated
53
52 Equivalence Relations Reflexive: x R x Symmetric: x R y y R x Transitive: x R y and y R z x R z Example: R = ‘=‘ x = x x = y y = x x = y and y = z x = z
54
53 Equivalence Classes For equivalence relation R equivalence class of x = {y : x R y} Example: R = { (1, 1), (2, 2), (1, 2), (2, 1), (3, 3), (4, 4), (3, 4), (4, 3) } Equivalence class of 1 = {1, 2} Equivalence class of 3 = {3, 4}
55
54 GRAPHS A directed graph Nodes (Vertices) V = { a, b, c, d, e } Edges E = { (a,b), (b,c), (b,e),(c,a), (c,e), (d,c), (e,b), (e,d) } node edge a b c d e
56
55 Labeled Graph a b c d e 1 3 5 6 2 6 2
57
56 Walk a b c d e Walk is a sequence of adjacent edges (e, d), (d, c), (c, a)
58
57 Path a b c d e Path is a walk where no edge is repeated Simple path: no node is repeated
59
58 Cycle a b c d e 1 2 3 Cycle: a walk from a node (base) to itself Simple cycle: only the base node is repeated base
60
59 Euler Tour a b c d e 1 2 3 4 5 6 7 8 base A cycle that contains each edge once
61
60 Hamiltonian Cycle a b c d e 1 2 3 4 5 base A simple cycle that contains all nodes
62
61 Trees root leaf parent child Trees have no cycles
63
62 root leaf Level 0 Level 1 Level 2 Level 3 Height 3
64
63 Binary Trees
65
64 PROOF TECHNIQUES Proof by induction Proof by contradiction
66
65 Induction We have statements P 1, P 2, P 3, … If we know for some b that P 1, P 2, …, P b are true for any k >= b that P 1, P 2, …, P k imply P k+1 Then Every P i is true
67
66 Proof by Induction Inductive basis Find P 1, P 2, …, P b which are true Inductive hypothesis Let’s assume P 1, P 2, …, P k are true, for any k >= b Inductive step Show that P k+1 is true
68
67 Example Theorem: A binary tree of height n has at most 2 n leaves. Proof by induction: let L(i) be the number of leaves at level i L(0) = 1 L(1) = 2 L(2) = 4 L(3) = 8
69
68 We want to show: L(i) <= 2 i Inductive basis L(0) = 1 (the root node) Inductive hypothesis Let’s assume L(i) <= 2 i for all i = 0, 1, …, k Induction step we need to show that L(k + 1) <= 2 k+1
70
69 Induction Step From Inductive hypothesis: L(k) <= 2 k Level k k+1
71
70 L(k) <= 2 k Level k k+1 L(k+1) <= 2 * L(k) <= 2 * 2 k = 2 k+1 Induction Step
72
71 Remark Recursion is another thing Example of recursive function: f(n) = f(n-1) + f(n-2) f(0) = 1, f(1) = 1
73
72 Proof by Contradiction We want to prove that a statement P is true we assume that P is false then we arrive at an incorrect conclusion therefore, statement P must be true
74
73 Example Theorem: is not rational Proof: Assume by contradiction that it is rational = n/m n and m have no common factors We will show that this is impossible
75
74 = n/m 2 m 2 = n 2 Therefore, n 2 is even n is even n = 2 k 2 m 2 = 4k 2 m 2 = 2k 2 m is even m = 2 p Thus, m and n have common factor 2 Contradiction!
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.