Analysis of Algorithms CS 477/677

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Presentation transcript:

Analysis of Algorithms CS 477/677 Sorting – Part A Instructor: George Bebis (Chapter 2)

The Sorting Problem Input: Output: A sequence of n numbers a1, a2, . . . , an Output: A permutation (reordering) a1’, a2’, . . . , an’ of the input sequence such that a1’ ≤ a2’ ≤ · · · ≤ an’

Structure of data

Why Study Sorting Algorithms? There are a variety of situations that we can encounter Do we have randomly ordered keys? Are all keys distinct? How large is the set of keys to be ordered? Need guaranteed performance? Various algorithms are better suited to some of these situations

Some Definitions Internal Sort External Sort In Place Sort The data to be sorted is all stored in the computer’s main memory. External Sort Some of the data to be sorted might be stored in some external, slower, device. In Place Sort The amount of extra space required to sort the data is constant with the input size.

Stability A STABLE sort preserves relative order of records with equal keys Sorted on first key: Sort file on second key: Records with key value 3 are not in order on first key!!

Insertion Sort Idea: like sorting a hand of playing cards Start with an empty left hand and the cards facing down on the table. Remove one card at a time from the table, and insert it into the correct position in the left hand compare it with each of the cards already in the hand, from right to left The cards held in the left hand are sorted these cards were originally the top cards of the pile on the table

Insertion Sort To insert 12, we need to make room for it by moving first 36 and then 24. 6 10 24 36 12

Insertion Sort 6 10 24 36 12

Insertion Sort 24 36 10 6 12

Insertion Sort 5 2 4 6 1 3 input array 5 2 4 6 1 3 at each iteration, the array is divided in two sub-arrays: left sub-array right sub-array unsorted sorted

Insertion Sort

INSERTION-SORT Alg.: INSERTION-SORT(A) for j ← 2 to n do key ← A[ j ] Insert A[ j ] into the sorted sequence A[1 . . j -1] i ← j - 1 while i > 0 and A[i] > key do A[i + 1] ← A[i] i ← i – 1 A[i + 1] ← key Insertion sort – sorts the elements in place a8 a7 a6 a5 a4 a3 a2 a1 1 2 3 4 5 6 7 8 key

Loop Invariant for Insertion Sort Alg.: INSERTION-SORT(A) for j ← 2 to n do key ← A[ j ] Insert A[ j ] into the sorted sequence A[1 . . j -1] i ← j - 1 while i > 0 and A[i] > key do A[i + 1] ← A[i] i ← i – 1 A[i + 1] ← key Invariant: at the start of the for loop the elements in A[1 . . j-1] are in sorted order

Proving Loop Invariants Proving loop invariants works like induction Initialization (base case): It is true prior to the first iteration of the loop Maintenance (inductive step): If it is true before an iteration of the loop, it remains true before the next iteration Termination: When the loop terminates, the invariant gives us a useful property that helps show that the algorithm is correct Stop the induction when the loop terminates

Loop Invariant for Insertion Sort Initialization: Just before the first iteration, j = 2: the subarray A[1 . . j-1] = A[1], (the element originally in A[1]) – is sorted

Loop Invariant for Insertion Sort Maintenance: the while inner loop moves A[j -1], A[j -2], A[j -3], and so on, by one position to the right until the proper position for key (which has the value that started out in A[j]) is found At that point, the value of key is placed into this position.

Loop Invariant for Insertion Sort Termination: The outer for loop ends when j = n + 1  j-1 = n Replace n with j-1 in the loop invariant: the subarray A[1 . . n] consists of the elements originally in A[1 . . n], but in sorted order The entire array is sorted! j - 1 j Invariant: at the start of the for loop the elements in A[1 . . j-1] are in sorted order

Analysis of Insertion Sort INSERTION-SORT(A) for j ← 2 to n do key ← A[ j ] Insert A[ j ] into the sorted sequence A[1 . . j -1] i ← j - 1 while i > 0 and A[i] > key do A[i + 1] ← A[i] i ← i – 1 A[i + 1] ← key cost times c1 n c2 n-1 0 n-1 c4 n-1 c5 c6 c7 c8 n-1 7 tj: # of times the while statement is executed at iteration j

Best Case Analysis The array is already sorted A[i] ≤ key upon the first time the while loop test is run (when i = j -1) tj = 1 T(n) = c1n + c2(n -1) + c4(n -1) + c5(n -1) + c8(n-1) = (c1 + c2 + c4 + c5 + c8)n + (c2 + c4 + c5 + c8) = an + b = (n) “while i > 0 and A[i] > key”

Worst Case Analysis The array is in reverse sorted order Always A[i] > key in while loop test Have to compare key with all elements to the left of the j-th position  compare with j-1 elements  tj = j a quadratic function of n T(n) = (n2) order of growth in n2 “while i > 0 and A[i] > key” using we have:

Comparisons and Exchanges in Insertion Sort INSERTION-SORT(A) for j ← 2 to n do key ← A[ j ] Insert A[ j ] into the sorted sequence A[1 . . j -1] i ← j - 1 while i > 0 and A[i] > key do A[i + 1] ← A[i] i ← i – 1 A[i + 1] ← key cost times c1 n c2 n-1 0 n-1 c4 n-1 c5 c6 c7 c8 n-1  n2/2 comparisons  n2/2 exchanges

Insertion Sort - Summary Advantages Good running time for “almost sorted” arrays (n) Disadvantages (n2) running time in worst and average case  n2/2 comparisons and exchanges

Bubble Sort (Ex. 2-2, page 38) Idea: Repeatedly pass through the array Swaps adjacent elements that are out of order Easier to implement, but slower than Insertion sort i 1 2 3 n 1 3 2 9 6 4 8 j

Example 1 3 2 9 6 4 8 i = 1 j 3 2 9 6 4 8 1 i = 2 j 3 1 2 9 6 4 8 i = 1 j 3 9 6 4 8 2 1 i = 3 j 3 2 1 9 6 4 8 i = 1 j 9 6 4 8 3 2 1 i = 4 j 3 2 9 1 6 4 8 i = 1 j 9 6 8 4 3 2 1 i = 5 j 3 2 9 6 1 4 8 i = 1 j 9 8 6 4 3 2 1 i = 6 j 3 2 9 6 4 1 8 i = 1 j 9 8 6 4 3 2 1 i = 7 j 3 2 9 6 4 8 1 i = 1 j

Bubble Sort Alg.: BUBBLESORT(A) for i  1 to length[A] do for j  length[A] downto i + 1 do if A[j] < A[j -1] then exchange A[j]  A[j-1] i 1 3 2 9 6 4 8 i = 1 j

Bubble-Sort Running Time Alg.: BUBBLESORT(A) for i  1 to length[A] do for j  length[A] downto i + 1 do if A[j] < A[j -1] then exchange A[j]  A[j-1] c1 c2 c3 Comparisons:  n2/2 c4 Exchanges:  n2/2 T(n) = c1(n+1) + c2 c3 c4 = (n) + (c2 + c2 + c4) Thus,T(n) = (n2)

Selection Sort (Ex. 2.2-2, page 27) Idea: Find the smallest element in the array Exchange it with the element in the first position Find the second smallest element and exchange it with the element in the second position Continue until the array is sorted Disadvantage: Running time depends only slightly on the amount of order in the file

Example 1 3 2 9 6 4 8 8 6 9 4 3 2 1 8 3 2 9 6 4 1 8 9 6 4 3 2 1 8 3 4 9 6 2 1 9 8 6 4 3 2 1 8 6 4 9 3 2 1 9 8 6 4 3 2 1

Selection Sort Alg.: SELECTION-SORT(A) n ← length[A] for j ← 1 to n - 1 do smallest ← j for i ← j + 1 to n do if A[i] < A[smallest] then smallest ← i exchange A[j] ↔ A[smallest] 1 3 2 9 6 4 8

Analysis of Selection Sort Alg.: SELECTION-SORT(A) n ← length[A] for j ← 1 to n - 1 do smallest ← j for i ← j + 1 to n do if A[i] < A[smallest] then smallest ← i exchange A[j] ↔ A[smallest] cost times c1 1 c2 n c3 n-1 c4 c5 c6 c7 n-1 n2/2 comparisons n exchanges