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1 CS 201 Data Structures & Algorithms Chapter 1 Introduction Text: Read Weiss, §1.1 – 1.3 Izmir University of Economics.

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Presentation on theme: "1 CS 201 Data Structures & Algorithms Chapter 1 Introduction Text: Read Weiss, §1.1 – 1.3 Izmir University of Economics."— Presentation transcript:

1 1 CS 201 Data Structures & Algorithms Chapter 1 Introduction Text: Read Weiss, §1.1 – 1.3 Izmir University of Economics

2 2 Course Policy Syllabus Grading Labs always in C++ (and/or C) programming language Each assignment starts and ends in the same Lab session. Late assignments will not be accepted. Study hard! Izmir University of Economics

3 3 Introduction See that how a program performs for reasonably large input is just as important as its performance on moderate amounts of input Summarize basic mathematical background needed Review recursion Izmir University of Economics

4 4 Motivating Examples: Selection Selection problem: you have a group of N numbers and would like to determine the k th largest. I: read them into an array. Sort them in a decreasing order. Return the k th element. II: read the first k elements into the array. Sort them in decreasing order. Next read the remaining elements one by one. If the new element read is smaller than the last, ignore it otherwise place in the correct spot in the array bumping one element out of the array. A simulation with a random file of 10 million elements and k = 5,000,000 shows that each requires several days of computer processing. Izmir University of Economics

5 5 Motivating Examples: Word Puzzles Solving a popular word puzzle: Input consists of a two dimensional array of letters and a list of words. The objective is to find the words laying horizontally, vertically or diagonally in either direction. I: for each word in the word list, check (row, column, orientation) II: for each ordered quadruple (row, column, orientation, number of characters), test whether the word is in the word list. {this, two, fat, that} Izmir University of Economics

6 6 Math Review - Exponents X A X B = X A+B X A /X B = X A-B (X A ) B = X AB X N +X N = 2X N !=X 2N Izmir University of Economics

7 7 Math Review – Logarithms I In computer science, all logarithms are to the base 2 unless specified otherwise. Definition 1.1. X A = B if log X B=A Theorem 1.1. log A B = log C B/log C A where A, B, C > 0, A != 1 Proof: Let X=log C B, Y=log C A, Z=log A B C X =B, C Y =A, A Z =B by Definition 1.1. B=C X =(C Y ) Z.Therefore, X=YZ Theorem 1.2. log AB = logA + logB where A, B > 0 Proof: X=logA, Y=logB, and Z=logAB, 2 X =A, 2 Y =B, and 2 Z =AB, 2 X 2 Y =AB=2 Z. Therefore, X+Y=Z Izmir University of Economics

8 Math Review – Logarithms II log A/B = logA – logB log(A B )=BlogA logX 0 log1 = 0, log2 = 1, log1024 = 10 8Izmir University of Economics

9 9 Math Review – Series I Geometric Series If 0 < A < 1, then and as N tends to , the sum approaches 1/(1-A) S=1+A+A 2 +A 3 +A 4... AS=A+A 2 +A 3 +A 4 +A 5... S-AS= 1 which implies S=1/(1-A) Izmir University of Economics

10 10 Math Review – Series II Arithmetic Series Izmir University of Economics

11 11 Math Review – Series III The error in the approximation tends to Euler’s constant  = 0.57721566 Izmir University of Economics

12 12 Math Review – Modular Arithmetic A  B (mod N) means A is congruent to B modulo N, If N divides A-B (remainders are the same) Example:81  61  1 (mod 10) if A  B (mod N), then A + C  B + C (mod N) and AD  BD (mod N) Izmir University of Economics

13 13 The P Word – Proof by Induction There are various ways of proving statements in data structures analysis Proof by Induction: It has two standart parts: The first step is proving a base case. Establishing that a theorem is true for some small (usually degenerate) value(s). This step is almost always trivial. Next, an inductive hypothesis is assumed. Generally this means that the theorem is assumed to be true for all cases up to some limit k.Using the assumption, the theorem is then shown to be true for the next value, typically k+1. Izmir University of Economics

14 14 The P Word – Induction Example I Example: Prove that Fibonacci Numbers F 0 =1, F 1 =1, and F i =F i-1 +F i-2 for i > 1, satisfy F i < (5/3) i for i ≥ 1. Proof: Verify that the theorem is true for the trivial cases (base cases): F 1 =1 < (5/3) 1 and, F 2 = 2 < (5/3) 2. These prove the basis. We now assume that the theorem is true for i = 1, 2,..., k; this is the inductive hypothesis. To prove the theorem, we need to prove F k+1 <(5/3) k+1. Izmir University of Economics

15 15 Example: If N ≥ 1 then Proof: For the base case, the theorem is true when N = 1. For the inductive hypothesis, assume the theorem is true for 1 ≤ k ≤ N. Let’s try to prove that it is true for N + 1 The P Word – Induction Example II Izmir University of Economics

16 Proof by Counterexample: Best way for proving that a statement is false. Example: The statement F k ≤ k 2 is false. The easiest way to prove this is to compute F 11 = 144 > 11 2 = 121 16 Proof by Counterexample Izmir University of Economics

17 Proof by Contradiction It proceeds by assuming that the theorem is false and showing that this assumption implies that some known property is false, and hence the original assumption is erroneous. Example: Prove that there is an infinite number of primes. Proof: Assume the theorem is false, so that there is some largest prime P k. Let P 1, P 2,..., P k be all the primes in order and consider N = P 1 P 2...P k + 1. Clearly, N > P k, so by assumption N can not be prime. However, none of P 1, P 2,..., P k divides N exactly, because remainders are all 1. This is a contradiction: numbers are either prime or a product of primes. Hence the original assumption is false implying that the theorem is true. 17Izmir University of Economics

18 18 A Brief Introduction to Recursion A function that is defined in terms of itself is called recursive. Not all mathematically recursive functions are correctly or efficiently implemented by recursion. Example: for all integers x ≥ 0 with f(0)=0 #include int F( int X ) { if( X == 0 ) /* base case */ return 0; else return 2 * F( X - 1 ) + X * X; } main( ) { printf( "F(4) = %d\n", F( 4 ) ); return 0; } If F is called with a value of 4, then 2*F(3)+4*4 will be required to be computed. Thus a call is made to find F(3). F(4)=2*F(3)+4*4 F(3)=2*F(2)+3*3 F(2)=2*F(1)+2*2 F(1)=2*F(0)+1*1 F(0)=0 base case. Recursive calls until a base case. F(-1)=? Automatic Bookkeeping Izmir University of Economics

19 Recursion - Bad #include int Bad( unsigned int N ) { if( N == 0 ) return 0; else return Bad( N / 3 + 1 ) + N - 1; } main( ) { printf( "Bad is infinite recursion\n" ); return 0; } 19Izmir University of Economics Bad(0)=0, Bad(N)=Bad(N/3 + 1) + N – 1 To compute Bad(1), the computer will repeatedly make calls to Bad(1). Eventually, it will run out of space

20 Fundamental Rules of Recursion - I 1) Base cases: You must always have some base cases, which can be solved without recursion. 2) Making progress: For the cases to be solved recursively, the recursive call must always be to a case that makes progress toward a base case. Izmir University of Economics20

21 Recursion - Induction #include #define PrintDigit( Ch ) ( putchar( ( Ch ) + '0' ) ) /* Print nonnegative N */ void PrintOut( unsigned int N ) { if( N >= 10 ) PrintOut( N / 10 ); PrintDigit( N % 10 ); } main( ) { PrintOut( 1369 ); putchar( '\n' ); return 0; } 21Izmir University of Economics PrintOut(N) prints out positive integers. PrintDigit(Ch) take a single digit number as character and output it to the terminal Theorem: Recursive number-printing algorithm is correct for N ≥ 0. Proof (by induction): If N has one digit, then it is correct. Assume it works for all numbers of k or fewer digits. A number of k+1 digits is expressed by its first k digits followed by its least significant digit. By the inductive hypothesis, first part is printed correctly and then the last digit is appended.

22 3) Design rule: Assume that all the recursive calls work. This rule is important. It relieves you of the burden of thinking about the details of bookkeeping. 4) Compound interest rule: Never duplicate work by solving the same instance of a problem in separate calls. Hidden bookkeeping costs are mostly justifiable. However; It should never be used as a substitute for a simple loop. Izmir University of Economics22 Fundamental Rules of Recursion - II

23 C Style

24 Kth Fibonacci Numbers

25 kth Fibonacci Numbers int BinaryFib(k) { // Input: An integer k // Output: The kth Fibonacci number if (k <= 1) then return k ; else return BinaryFib(k-1)+BinaryFib(k-2); } Binary recursion

26 Recursion Calculate factorial (n!) of a positive integer: n! = n(n-1)(n-2)...(n-n-1), 0! = 1! = 1 int factorial(int n) { if (n <= 1) return 1; else return (n * factorial(n-1)); }

27 Homework Assignments 1.5, 1.7, 1.8.a, 1.8.b, 1.8.c, 1.9, and 1.12. You are requested to study and solve the exercises. Note that these are for you to practice only. You are not to deliver the results to me. Izmir University of Economics27


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