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Lecture 2: Divide and Conquer I: Merge-Sort and Master Theorem

Lecture 2: Divide and Conquer I: Merge-Sort and Master Theorem. Shang-Hua Teng. Algorithm Design Paradigm I. Solve smaller problems, and use solutions to the smaller problems to solve larger ones Incremental (e.g., insertion and selection sort) Divide and Conquer (Today’s topic)

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Lecture 2: Divide and Conquer I: Merge-Sort and Master Theorem

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  1. Lecture 2:Divide and Conquer I:Merge-Sort and Master Theorem Shang-Hua Teng

  2. Algorithm Design Paradigm I • Solve smaller problems, and use solutions to the smaller problems to solve larger ones • Incremental (e.g., insertion and selection sort) • Divide and Conquer (Today’s topic) • Dynamic Programming (Feb 11 and Feb 13) • Correctness: mathematical induction • Running Time Analysis: recurrences • Incremental is often a special case of Divide and Conquer

  3. Divide and Conquer • Divide the problem into a number of sub-problems (similar to the original problem but smaller); • Conquer the sub-problems by solving them recursively (if a sub-problem is small enough, just solve it in a straightforward manner. • Combine the solutions to the sub-problems into the solution for the original problem

  4. Sorting • Input: Array A[1...n], of elements in arbitrary order; array size nOutput:  Array A[1...n] of the same elements, but in the non-decreasing order

  5. Merge Sort • Divide the n-element sequence to be sorted into two subsequences of n/2 element each • Conquer: Sort the two subsequences recursively using merge sort • Combine: merge the two sorted subsequences to produce the sorted answer • Note: during the recursion, if the subsequence has only one element, then do nothing.

  6. Merge-Sort(A,p,r)A procedure sorts the elements in the sub-array A[p..r] using divide and conquer • Merge-Sort(A,p,r) • ifp >= r, do nothing • ifp< rthen • Merge-Sort(A,p,q) • Merge-Sort(A,q+1,r) • Merge(A,p,q,r) • Starting by calling Merge-Sort(A,1,n)

  7. A = MergeArray(L,R)Assume L[1:s] and R[1:t] are two sorted arrays of elements: Merge-Array(L,R) forms a single sorted array A[1:s+t] of all elements in L and R. • A = MergeArray(L,R) • fork 1tos + t • do if • then • else

  8. Correctness of MergeArray • Loop-invariant • At the start of each iteration of the for loop, the subarray A[1:k-1] contains the k-1 smallest elements of L[1:s+1] and R[1:t+1] in sorted order. Moreover, L[i] and R[j] are the smallest elements of their arrays that have not been copied back to A

  9. Inductive Proof of Correctness • Initialization: (the invariant is true at beginning) prior to the first iteration of the loop, we have k = 1, so that A[1,k-1] is empty. This empty subarray contains k-1 = 0 smallest elements of L and R and since i = j = 1, L[i] and R[j] are the smallest element of their arrays that have not been copied back to A.

  10. Inductive Proof of Correctness • Maintenance: (the invariant is true after each iteration) WLOG: assume L[i] <= R[j], the L[i] is the smallest element not yet copied back to A. Hence after copy L[i] to A[k], the subarray A[1..k] contains the k smallest elements. Increasing k and i by 1 reestablishes the loop invariant for the next iteration.

  11. Inductive Proof of Correctness • Termination: (loop invariant implies correctness) At termination we have k = s+t + 1, by the loop invariant, we have A contains the k-1 (s+t) smallest elements of L and R in sorted order.

  12. Complexity of MergeArray • At each iteration, we perform 1 comparison, 1 assignment (copy one element to A) and 2 increments (to k and i or j ) • So number of operations per iteration is 4. • Thus, Merge-Array takes at most 4(s+t) time. • Linear in input size.

  13. Merge (A,p,q,r)Assume A[p..q] and A[q+1..r] are two sorted Merge(A,p,q,r) forms a single sorted array A[p..r]. • Merge (A,p,q,r)

  14. Merge-Sort(A,p,r)A procedure sorts the elements in the sub-array A[p..r] using divide and conquer • Merge-Sort(A,p,r) • ifp >= r, do nothing • ifp< rthen • Merge-Sort(A,p,q) • Merge-Sort(A,q+1,r) • Merge(A,p,q,r)

  15. Running Time of Merge-Sort • Running time as a function of the input size, that is the number of elements in the array A. • The Divide-and-Conquer scheme yields a clean recurrences. • Assume T(n) be the running time of merge-sort for sorting an array of n elements. • For simplicity assume n is a power of 2, that is, there exists k such that n = 2k .

  16. Recurrence of T(n) • T(1) = 1 • for n > 1, we have if n = 1 if n > 1

  17. Solution of Recurrence of T(n) T(n) = 4nlog n + n • Picture Proof by Recursion Tree

  18. Asymptotic Notation • As input size grow, how fast the running time grow. • T1(n) = 100 n • T2(n) = n2 • Which algorithms is better? • When n < 100 is small then T1 is smaller • As n becomes larger, T2 grows much faster • To solve ambitious, large-scale problem, algorithm1 is preferred.

  19. Asymptotic Notation(Removing the constant factor) • The Q Notation • For example Q(g(n)) = { f(n): there exist positive c1 and c2 and n0 such that for all n > n0} • For example T(n) = 4nlog n + n = Q(nlog n)

  20. Asymptotic Notation(Removing the constant factor) • TheBig-O Notation • For example O(g(n)) = { f(n): there exist positive cand n0 such that for all n > n0} • For example T(n) = 4nlog n + n = O(nlog n) • But also T(n) = 4nlog n + n = O(n2)

  21. if n < c if n > 1 General Recurrence for Divide-and-Conquer • If a divide and conquer scheme divides a problem of size n into a sub-problems of size at most n/b. Suppose the time for Divide is D(n) and time for Combination is C(n), then • How do we bound T(n)?

  22. The Master Theorem • Consider • where a >= 1 and b>= 1 • we will ignore ceilings and floors (all absorbed in the O or Q notation) if n < c if n > 1

  23. The Master Theorem • If for some constant e > 0 then • If then • If for some constant e > 0 and if a f(n/b) <= cf(n) for some constant c < 1 and all sufficiently large n, then T(n) =Q(f (n))

  24. Example:The Master Theorem • If T(n) = T(2n/3) + 1 then T(n) = Q(log n) • If T(n) = 9T(n/3) + n, then T(n) = Q(n2) • If T(n) = 3T(n/4) + n log n then T(n) =Q(n log n) • If T(n) = 2T(n/2) + n log n then T(n) = ??? (not polynomially large!!!) but we can show that T(n) =O(n log2n)

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