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Algorithmic Complexity and Random Strings

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1 Algorithmic Complexity and Random Strings
Manfred Denker Wojbor A. Woyczyński Presentation for STAT433 Lawrence Leinweber

2 Algorithmic Complexity
ran•dom adj. Having no specific pattern or objective Statistics Does not produce the same outcome every time Relative frequency approaches a stable limit as the number of events increases Each member has an equal chance 1. Is related to algorithmic complexity, 2. (a) is easy (b) equipartitioning (c) too narrow 4/18/07 Algorithmic Complexity

3 Algorithmic Complexity
Examples from Chapter 1 (a) Is obviously bad (b) is not good (c,d,e) look promising 4/18/07 Algorithmic Complexity

4 Algorithmic Complexity
Examples in Blocks (b,c) are repetitive blocks, (d) looks suspicious, (e) is really random, by computer 4/18/07 Algorithmic Complexity

5 Mathematical Randomness
Martin-Löf Random No features that make the string stand out from typical strings Von Mises Random Frequencies of 0s and 1s are stable Kolmogorov Random The string has a complex minimal description 1. Is very broad, 2. Equipartitioning, 3. Gets to the issue of descriptions 4/18/07 Algorithmic Complexity

6 Examples in Descriptions
Always “1” “10” Repeated Forever “ ” Repeated Forever Whole Numbers Expressed in Binary “ ” a) Describes most succinctly, (b,c) are the same but (c) has a longer block description, (d) is interesting: short but sophisticated (e) has no shorter description than itself, but then no description requires much more than that 4/18/07 Algorithmic Complexity

7 Algorithmic Complexity
The Minimum Cost Algorithm to Solve a Problem or Express a Result A Measure of the Difficulty in Time and Storage Space Not Practical to Measure: 1, n, n2, en Leads to Paradoxes 4/18/07 Algorithmic Complexity

8 Algorithmic Complexity
Algorithms as Data John von Neumann Von Neumann Architecture Programs and Data in the Same Kind of Memory Compilers Translate Programs Treat Programs as Data A Suitable Machine Can Read a Text Description of an Algorithm then Perform the Algorithm’s Actions 4/18/07 Algorithmic Complexity

9 Algorithmic Complexity
Turing Machine Machine Consists of: A Tape and a Current Position on the Tape A Program and a Current Step in the Program Machine Can Run Each Step of the Program Depending on the Program Step and Reading the Tape: Move the Position on the Tape Write the Tape Change the Step in the Program Halt Alan Turing 4/18/07 Algorithmic Complexity

10 Elements of a Turing Machine
Tape Storage Device Input / Output Program Executes: In Discrete Steps Loops Decisions 4/18/07 Algorithmic Complexity

11 Computational Complexity
Not Algorithmic Complexity Measure of the Execution Time per n Input Items Big-O Notation: Sorting Requires O(n log n) Time t: t < k n log n, k, n P Class – Polynomial Time: O(nm), m NP Class – Non-Polynomial: O(en), “Intractable” 4/18/07 Algorithmic Complexity

12 Universal Turing Machine
A Turing Machine, Running Any Particular Program, Can Be Simulated on a Universal Turing Machine, by Inputting an Encoding of That Program Model of a General Purpose Computer Programs Can Run on Any Suitable “Platform” 4/18/07 Algorithmic Complexity

13 Halting Problem (Simplified)
Does Program p Halt or Does It Loop Forever? H(p) Begin If p halts then H = true else H = false End Try This Program: Z(p) Begin If H(p) then loop forever else Z = false End If Z(Z) loops, H(Z) = true,  Z halts If Z(Z) halts, H(Z) = false,  Z loops 4/18/07 Algorithmic Complexity

14 Algorithmic Complexity
Gödel Numbering Function That Assigns a Unique Natural Number to Each Symbol and Formula A = { A, … , Z, 0, … , 9, , , , , … } Code(n) Begin While n > 0 Begin n = n – 1; Code = Code + A(n mod |A| + 1); n = n  |A| End End Gödel Numbering of Code(n) is n Kurt Gödel 4/18/07 Algorithmic Complexity

15 Kolmogorov Complexity
Andrey Kolmogorov Kolmogorov Compexity of a Number is the Length of the Shortest Description of the Number Shortdef(i) Begin n = 0; While UTM(Shortdef)  i Begin n = n + 1; ShortDef = Code(n) End End Kolmogorov Complexity of i is |Shortdef(i)| 4/18/07 Algorithmic Complexity

16 Richard-Berry Paradox
“The smallest number that cannot be defined in less than twenty words.” = 12 words Lilbigdef(i) Begin Lilbigdef = 0; While |Shortdef(Lilbigdef)| < i Begin Lilbigdef = Lilbigdef + 1 End End Lilbigdef(1000) Is Defined in < 1000 Symbols 4/18/07 Algorithmic Complexity

17 Gödel Incompleteness Theorem
Turing’s Halting Problem – 1936 Some Problems Are Undecidable Gödel’s Incompleteness Theorem – 1931 In a Mathematical System, Some True Statements about the System That Cannot Be Proven from the System’s Axioms 4/18/07 Algorithmic Complexity

18 The Fall of Determinism
Heisenberg Uncertainty Principle – 1927 Can’t Observe Electron’s Position, Momentum Simultaneously Einstein’s Theory of Special Relativity – 1905 No Simultaneity of Frames of Reference Michelson & Morley – 1887 No Ether Medium for Electromagnetic Waves 4/18/07 Algorithmic Complexity

19 Algorithmic Complexity
Summary Random Phenomena Can Be Characterized by Their Algorithmic Complexity The Minimum Length Algorithm to Describe a Number or Result Leads to Paradoxes Algorithmic Complexity is Related to Important Developments in the History of Computers 4/18/07 Algorithmic Complexity


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