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CS 3343: Analysis of Algorithms

CS 3343: Analysis of Algorithms. Lecture 3: Asymptotic Notations, Analyzing non-recursive algorithms. Outline. Review of last lecture Continue on asymptotic notations Analyzing non-recursive algorithms. Mathematical definitions.

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CS 3343: Analysis of Algorithms

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  1. CS 3343: Analysis of Algorithms Lecture 3: Asymptotic Notations, Analyzing non-recursive algorithms

  2. Outline • Review of last lecture • Continue on asymptotic notations • Analyzing non-recursive algorithms

  3. Mathematical definitions • O(g(n)) = {f(n):  positive constants c and n0 such that 0 ≤ f(n) ≤ cg(n)  n≥n0} • Ω(g(n)) = {f(n):  positive constants c and n0 such that 0 ≤ cg(n) ≤ f(n)  n≥n0} • Θ(g(n)) = {f(n):  positive constants c1, c2, and n0 such that 0  c1 g(n)  f(n)  c2 g(n)  n  n0}

  4. Big-Oh • Claim: f(n) = 3n2 + 10n + 5  O(n2) • Proof by definition: (Hint: Need to find c and n0 such that f(n) <= cn2 for all n ≥ n0. You can be sloppy about the constant factors. Pick a comfortably large c when proving big-O or small one when proving big-Omega.) (Note: you just need to find one concrete example of c and n0, but the condition needs to be met for all n ≥ n0. So do not try to plug in a concrete value of n and show the inequality holds.) Proof: 3n2 + 10n + 5  3n2 + 10n2 + 5,  n ≥ 1  3n2 + 10n2 + 5n2, n ≥ 1  18 n2,  n ≥ 1 If we let c = 18 and n0 = 1, we have f(n)  c n2,  n ≥ n0. Therefore by definition 3n2 + 10n + 5  O(n2).

  5. How to prove logn < n Let f(n) = 1 + log n, g(n) = n. Then f(n)’ = 1/n g(n)’ = 1. f(1) = g(1) = 1. Because f(n)’ ≤ g(n)’  n ≥ 1, by the racetrack principle, we have f(n) ≤ g(n)  n ≥ 1, i.e., 1 + log n ≤ n. Therefore, log n < 1 + log n ≤ n for all n From now on, we will use that fact that log n < n  n ≥ 1 without proof.

  6. True or false? • 2n2 + 1 = O(n2) T (also ) • Sqrt(n) = O(log n) F () • log n = O(sqrt(n)) T (also o) • n2(1 + sqrt(n)) = O(n2 log n) F () • 3n2 + sqrt(n) = O(n2) T (also ) • sqrt(n) log n = O(n) T (also o)

  7. True or false? • 2n2 + 1 = O(n2) T (also ) • Sqrt(n) = O(log n) F () • log n = O(sqrt(n)) T (also o) • n2(1 + sqrt(n)) = O(n2 log n) F () • 3n2 + sqrt(n) = O(n2) T (also ) • sqrt(n) log n = O(n) T (also o)

  8. Questions • If f(n)  O(g(n)) • compare f(n) and f(n) + g(n) • compare g(n) and f(n) + g(n) • compare h(n) f(n) and h(n) g(n) where h(n) > 0. • How about f(n) Ω (g(n)) and f(n) Θ (g(n))?

  9. Asymptotic notations • O: <= • o: < • Ω: >= • ω: > • Θ: = (in terms of growth rate)

  10. O, Ω, and Θ The definitions imply a constant n0beyond which they are satisfied. We do not care about small values of n. Use definition to prove big-O (Ω,Θ): find constant c (c1 and c2) and n0, such that the definition of big-O (Ω,Θ) is satisfied

  11. Use limits to compare orders of growth 0 • lim f(n) / g(n) = c > 0 ∞ f(n)  o(g(n)) f(n)  O(g(n)) f(n) Θ (g(n)) n→∞ f(n)  Ω(g(n)) f(n) ω (g(n))

  12. Examples • Compare 2n and 3n • lim 2n / 3n = lim(2/3)n = 0 • Therefore, 2n o(3n), and 3nω(2n) • How about 2n and 2n+1? 2n / 2n+1 = ½, therefore 2n = Θ (2n+1) n→∞ n→∞

  13. L’ Hopital’s rule Condition: If both lim f(n) and lim g(n) =  or 0 lim f(n) / g(n) = lim f(n)’ / g(n)’ n→∞ n→∞

  14. Example • Compare n0.5 and logn • lim n0.5 / logn = ? • (n0.5)’ = 0.5 n-0.5 • (log n)’ = 1 / n • lim (n-0.5 / 1/n) = lim(n0.5) = ∞ • Therefore, log n  o(n0.5) • In fact, log n  o(nε), for any ε > 0 n→∞

  15. Stirling’s formula or (constant)

  16. Examples • Compare 2n and n! • Therefore, 2n = o(n!) • Compare nn and n! • Therefore, nn = ω(n!) • How about log (n!)?

  17. Example

  18. Properties of asymptotic notations • Textbook page 51 • Transitivity f(n) = (g(n)) and g(n) = (h(n)) => f(n) = (h(n)) (holds true for o, O, , and  as well). • Symmetry f(n) = (g(n)) if and only if g(n) = (f(n)) • Transpose symmetry f(n) = O(g(n)) if and only if g(n) = (f(n)) f(n) = o(g(n)) if and only if g(n) = (f(n))

  19. About exponential and logarithm functions • Textbook page 55-56 • It is important to understand what logarithms are and where they come from. • A logarithm is simply an inverse exponential function. • Saying bx = y is equivalent to saying that x = logb y. • Logarithms reflect how many times we can double something until we get to n, or halve something until we get to 1. • log21 = ? • log22 = ?

  20. Binary Search • In binary search we throw away half the possible number of keys after each comparison. • How many times can we halve n before getting to 1? • Answer: ceiling (lg n)

  21. Logarithms and Trees • How tall a binary tree do we need until we have n leaves? • The number of potential leaves doubles with each level. • How many times can we double 1 until we get to n? • Answer: ceiling (lg n)

  22. Logarithms and Bits • How many numbers can you represent with k bits? • Each bit you add doubles the possible number of bit patterns • You can represent from 0 to 2k – 1 with k bits. A total of 2k numbers. • How many bits do you need to represent the numbers from 0 to n? • ceiling (lg (n+1))

  23. logarithms • lg n = log2 n • ln n = loge n, e ≈ 2.718 • lgkn = (lg n)k • lg lg n = lg (lg n) = lg(2)n • lg(k) n = lg lg lg … lg n • lg24 = ? • lg(2)4 = ? • Compare lgkn vs lg(k)n?

  24. Useful rules for logarithms For all a > 0, b > 0, c > 0, the following rules hold • logba = logca / logcb = lg a / lg b • logban = n logba • blogba = a • log (ab) = log a + log b • lg (2n) = ? • log (a/b) = log (a) – log(b) • lg (n/2) = ? • lg (1/n) = ? • logba = 1 / logab

  25. Useful rules for exponentials • For all a > 0, b > 0, c > 0, the following rules hold • a0 = 1 (00 = ?) • a1 = a • a-1 = 1/a • (am)n = amn • (am)n = (an)m • aman = am+n

  26. More advanced dominance ranking

  27. Analyzing the complexity of an algorithm

  28. Kinds of analyses • Worst case • Provides an upper bound on running time • Best case – not very useful, can always cheat • Average case • Provides the expected running time • Very useful, but treat with care: what is “average”?

  29. General plan for analyzing time efficiency of a non-recursive algorithm • Decide parameter (input size) • Identify most executed line (basic operation) • worst-case = average-case? • T(n) = i ti • T(n) = Θ (f(n))

  30. Example repeatedElement (A, n) // determines whether all elements in a given // array are distinct for i = 1 to n-1 { for j = i+1 to n { if (A[i] == A[j]) return true; } } return false;

  31. Example repeatedElement (A, n) // determines whether all elements in a given // array are distinct for i = 1 to n-1 { for j = i+1 to n { if (A[i] == A[j]) return true; } } return false;

  32. Best case? • Worst-case? • Average case?

  33. Best case • A[1] = A[2] • T(n) = Θ (1) • Worst-case • No repeated elements • T(n) = (n-1) + (n-2) + … + 1 = n (n-1) / 2 = Θ (n2) • Average case? • What do you mean by “average”? • Need more assumptions about data distribution. • How many possible repeats are in the data? • Average-case analysis often involves probability.

  34. Find the order of growth for sums • T(n) = i=1..n i = Θ (n2) • T(n) = i=1..n log (i) = ? • T(n) = i=1..n n / 2i = ? • T(n) = i=1..n 2i = ? • … • How to find out the actual order of growth? • Math… • Textbook Appendix A.1 (page 1058-60)

  35. Arithmetic series • An arithmetic series is a sequence of numbers such that the difference of any two successive members of the sequence is a constant. e.g.: 1, 2, 3, 4, 5 or 10, 12, 14, 16, 18, 20 • In general: Recursive definition Closed form, or explicit formula Or:

  36. Sum of arithmetic series If a1, a2, …, an is an arithmetic series, then e.g. 1 + 3 + 5 + 7 + … + 99 = ? (series definition: ai = 2i-1) This is ∑i = 1 to 50 (ai) = 50 * (1 + 99) / 2 = 2500

  37. Geometric series • A geometric series is a sequence of numbers such that the ratio between any two successive members of the sequence is a constant. e.g.: 1, 2, 4, 8, 16, 32 or 10, 20, 40, 80, 160 or 1, ½, ¼, 1/8, 1/16 • In general: Recursive definition Closed form, or explicit formula Or:

  38. Sum of geometric series if r < 1 if r > 1 if r = 1

  39. Sum of geometric series if r < 1 if r > 1 if r = 1

  40. Important formulas

  41. Sum manipulation rules Example:

  42. Sum manipulation rules Example:

  43. i=1..n n / 2i = n * i=1..n (½)i = ? • using the formula for geometric series: i=0..n (½)i = 1 + ½ + ¼ + … (½)n = 2 • Application: algorithm for allocating dynamic memories

  44. i=1..n log (i) = log 1 + log 2 + … + log n = log 1 x 2 x 3 x … x n = log n! = (n log n) • Application: algorithm for selection sort using priority queue

  45. Recursive definition of sum of series • T (n) = i=0..n i is equivalent to: T(n) = T(n-1) + n T(0) = 0 • T(n) = i=0..n ai is equivalent to: T(n) = T(n-1) + an T(0) = 1 Recurrence Boundary condition Recursive definition is often intuitive and easy to obtain. It is very useful in analyzing recursive algorithms, and some non-recursive algorithms too.

  46. Recursive definition of sum of series • How to solve such recurrence or more generally, recurrence in the form of: • T(n) = aT(n-b) + f(n) or • T(n) = aT(n/b) + f(n)

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