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2-0 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Theoretical.

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Presentation on theme: "2-0 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Theoretical."— Presentation transcript:

1 2-0 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Theoretical analysis of time efficiency Time efficiency is analyzed by determining the number of repetitions of the basic operation as a function of input size b Basic operation: the operation that contributes most towards the running time of the algorithm T(n) ≈ c op C(n) T(n) ≈ c op C(n) running time execution time for basic operation Number of times basic operation is executed input size

2 2-1 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Input size and basic operation examples Problem Input size measure Basic operation Searching for key in a list of n items Number of list’s items, i.e. n Key comparison Multiplication of two matrices Matrix dimensions or total number of elements Multiplication of two numbers Checking primality of a given integer n n’size = number of digits (in binary representation) Division Typical graph problem #vertices and/or edges Visiting a vertex or traversing an edge

3 2-2 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Empirical analysis of time efficiency b Select a specific (typical) sample of inputs b Use physical unit of time (e.g., milliseconds) or or Count actual number of basic operation’s executions Count actual number of basic operation’s executions b Analyze the empirical data

4 2-3 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Best-case, average-case, worst-case For some algorithms efficiency depends on form of input: b Worst case: C worst (n) – maximum over inputs of size n b Best case: C best (n) – minimum over inputs of size n b Average case: C avg (n) – “average” over inputs of size n Number of times the basic operation will be executed on typical inputNumber of times the basic operation will be executed on typical input NOT the average of worst and best caseNOT the average of worst and best case Expected number of basic operations considered as a random variable under some assumption about the probability distribution of all possible inputsExpected number of basic operations considered as a random variable under some assumption about the probability distribution of all possible inputs

5 2-4 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example: Sequential search b Worst case b Best case b Average case

6 2-5 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Types of formulas for basic operation’s count b Exact formula e.g., C(n) = n(n-1)/2 e.g., C(n) = n(n-1)/2 b Formula indicating order of growth with specific multiplicative constant e.g., C(n) ≈ 0.5 n 2 e.g., C(n) ≈ 0.5 n 2 b Formula indicating order of growth with unknown multiplicative constant e.g., C(n) ≈ cn 2 e.g., C(n) ≈ cn 2

7 2-6 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Order of growth b Most important: Order of growth within a constant multiple as n→∞ b Example: How much faster will algorithm run on computer that is twice as fast?How much faster will algorithm run on computer that is twice as fast? How much longer does it take to solve problem of double input size?How much longer does it take to solve problem of double input size?

8 2-7 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Values of some important functions as n  

9 2-8 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Asymptotic order of growth A way of comparing functions that ignores constant factors and small input sizes b O(g(n)): class of functions f(n) that grow no faster than g(n)  Θ (g(n)): class of functions f(n) that grow at same rate as g(n)  Ω (g(n)): class of functions f(n) that grow at least as fast as g(n)

10 2-9 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Big-oh

11 2-10 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Big-omega

12 2-11 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Big-theta

13 2-12 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Establishing order of growth using the definition Definition: f(n) is in O(g(n)) if order of growth of f(n) ≤ order of growth of g(n) (within constant multiple), i.e., there exist positive constant c and non-negative integer n 0 such that f(n) ≤ c g(n) for every n ≥ n 0 f(n) ≤ c g(n) for every n ≥ n 0Examples: b 10n is O(n 2 ) b 5n+20 is O(n)

14 2-13 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Basic asymptotic efficiency classes 1constant log n logarithmic nlinear n log n n-log-n n2n2n2n2quadratic n3n3n3n3cubic 2n2n2n2nexponential n!n!n!n!factorial

15 2-14 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Time efficiency of nonrecursive algorithms General Plan for Analysis b Decide on parameter n indicating input size b Identify algorithm’s basic operation b Determine worst, average, and best cases for input of size n b Set up a sum for the number of times the basic operation is executed b Simplify the sum using standard formulas and rules (see Appendix A)

16 2-15 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Useful summation formulas and rules  l  i  u 1 = 1+1+…+1 = u - l + 1 In particular,  l  i  u 1 = n - 1 + 1 = n   (n) In particular,  l  i  u 1 = n - 1 + 1 = n   (n)  1  i  n i = 1+2+…+n = n(n+1)/2  n 2 /2   (n 2 )  1  i  n i 2 = 1 2 +2 2 +…+n 2 = n(n+1)(2n+1)/6  n 3 /3   (n 3 )  0  i  n a i = 1 + a +…+ a n = (a n+1 - 1)/(a - 1) for any a  1 In particular,  0  i  n 2 i = 2 0 + 2 1 +…+ 2 n = 2 n+1 - 1   (2 n ) In particular,  0  i  n 2 i = 2 0 + 2 1 +…+ 2 n = 2 n+1 - 1   (2 n )  (a i ± b i ) =  a i ±  b i  ca i = c  a i  l  i  u a i =  l  i  m a i +  m+1  i  u a i

17 2-16 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example 1: Maximum element

18 2-17 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example 2: Element uniqueness problem

19 2-18 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example 3: Matrix multiplication

20 2-19 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example 5: Counting binary digits It cannot be investigated the way the previous examples are.

21 2-20 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Plan for Analysis of Recursive Algorithms b Decide on a parameter indicating an input’s size. b Identify the algorithm’s basic operation. b Check whether the number of times the basic op. is executed may vary on different inputs of the same size. (If it may, the worst, average, and best cases must be investigated separately.) b Set up a recurrence relation with an appropriate initial condition expressing the number of times the basic op. is executed. b Solve the recurrence (or, at the very least, establish its solution’s order of growth) by backward substitutions or another method.

22 2-21 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example 1: Recursive evaluation of n! Definition: n ! = 1  2  …  (n-1)  n for n ≥ 1 and 0! = 1 Recursive definition of n!: F(n) = F(n-1)  n for n ≥ 1 and F(0) = 1 F(0) = 1Size: Basic operation: Recurrence relation:

23 2-22 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Solving the recurrence for M(n) M(n) = M(n-1) + 1, M(0) = 0

24 2-23 Copyright © 2007 Pearson Addison-Wesley. All rights reserved. A. Levitin “ Introduction to the Design & Analysis of Algorithms, ” 2 nd ed., Ch. 2 Example 3: Counting #bits


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