Recurrence Relations Analyzing the performance of recursive algorithms.
Recurrence Relations Connection to recursive algorithms Techniques for solving them.
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Transcript of Recurrence Relations Connection to recursive algorithms Techniques for solving them.
Recursion and Mathematical Induction
In both, we have general and boundary conditions:
The general conditions break the problem into smaller and smaller pieces.
The initial or boundary condition terminate the recursion.
Both take a Divide and Conquer approach to solving mathematical problems.
What if we knew we could solve part of the problem?
Assume we can move k (in this case, 4) different rings
Where do recurrence relations come from?
• Analysis of a divide and conquer algorithm– Towers of Hanoi, Merge Sort, Binary Search
• Analysis of a combinatorial object – up-down permutations
• This is the key analysis step I want you to master
• Use small cases to check correctness of your recurrence relation
Recurrence Relations
Possible recurrence relations:
an = an-1 + 1; a1 = 1 => an = n (linear)
an = an-1+ 2n - 1; a1=1 => an = n2 (polynomial)
an = 2an-1; a1 = 1 => an = 2n (exponential)
an = n an-1; a1 = 1 => an = n! (others…)
Can recurrence relations be solved?
• No general procedure for solving recurrence relations is known, which is why it is an art.
• However, linear, finite history, constant coefficient recurrences always can be solved
• Example: an = 2an-1 + 2an-2 +1 ; a1 = 1 ; a2 = 1– degree = 1– history = 2– coefficients = 2, 2, and 1
• In the end, what is the best way to solve this?– Software like Mathematica or Maple, but I still want you to be
able to solve some on your own without such aid
Solution Techniques
• Guess a solution by looking at a few small examples and prove by induction.
• Try back-substituting until you know what is going on.
• Draw a recursion tree.
• Master Theorem
• General Technique
First step
• Using the base case and the recursive case, calculate small values
• Use these values to help guess a solution
• Use these values to help verify correctness of your closed form solution
Guessing solution and proving by induction
We can use mathematical induction to prove that a general function solves for a recursive one.
Tn = 2Tn-1 + 1 ; T0 = 0
n = 0 1 2 3 4 5 6 7 8
Tn =
Guess what the solution is?
Guessing solution and proving by induction II
Prove: Tn = 2n - 1 by induction:
1. Show the base case is true: T0 = 20 - 1 = 0
2. Now assume true for Tn-1
3. Substitute in Tn-1 in recurrence for Tn
Tn = 2Tn-1 + 1
= 2 ( 2n-1 - 1 ) + 1
= 2n -1
Back-substitution
Example: T(n) = 3T(n/4) + n, T(1) = 1
= 3(3T(n/16)+n/4) + n
= 9T(n/16) + 3n/4 + n
= 9(3T(n/64) +n/16) + 3n/4 + n
= 27T(n/64)+9n/16 + 3n/4 + n
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Example Problem
Use induction to prove that MergeSort is an O(n log n) algorithm.
Mergesort(array)n = size(array)if ( n == 1) return arrayarray1 = Mergesort(array[1 .. n/2])array2 = Mergesort(array[n/2 .. n])return Merge(array1, array2)
Induction Proof
Example: Prove that T(n) = 2T( n/2 ) + n , T(1) = 1 is O(n log n).
Base case: n=2, c>4.
We need to prove that T(n) < c n log n , for all n greater than some value.
Inductive step: Assume T(n/2) ≤ c (n/2) log (n/2) Show that T(n) ≤ c n log n .
Induction Proof
Given : T(n/2) ≤ c (n/2) log (n/2)
T(n) = 2T( n/2 ) + n
≤ 2( c(n/2) log (n/2) ) + n≤ 2( c(n/2) log (n/2) ) + n (dropping floors makes it bigger!)= c n log(n/2) + n= c n ( log(n) - log(2) ) + n= c n log(n) - c n + n (log22 = 1)= c n log(n) - (c - 1) n< c n log(n) (c > 1)
Example Problem 2
T(n) = T(n/3) + T(2n/3) + n
Show T(n) is (n log n) by appealing to the recursion tree.
Master Theorem
• T(n) = a T(n/b) + f(n)– Ignore floors and ceilings for n/b
– constants a >= 1 and b>1
– f(n) any function
• If f(n) = O(nlog_b a-) for constant >0, T(n) = (nlog_b a)
• If f(n) = (nlog_b a), T(n) = (nlog_b a lg n)
• If f(n) = (nlog_b a+) for some constant >0, and if af(n/b) <= c f(n) for some constant c < 1 and all sufficiently large n, T(n) = (f(n)).
• Key idea: Compare nlog_b a with f(n)
Characteristic Equation Approach
• tn = 3tn-1 + 4tn-2 for n > 1– t0 = 0, t1 = 5
• Rewrite recurrence– tn - 3tn-1 - 4tn-2 = 0
• Properties– Homogeneous: no terms not involving tn
– Linear: tn terms have no squares or worse
– constant coefficients: 1, -3, -4
Characteristic Equation
• tn - 3tn-1 - 4tn-2 = 0
• Rewrite assume solution of the form tn = xn
• xn – 3xn-1 – 4xn-2 = 0• xn-2 (x2 – 3x – 4) = 0• Find roots of (x2 – 3x – 4)
– (x+1)(x-4) roots are -1 and 4
• Solution is of form c1(-1)n + c24n
Solving for constants
• tn = c1(-1)n + c24n
• Use base cases to solve for constants
– t0 = 0 = c1(-1)0 + c240 = c1 + c2
– t1 = 5 = c1(-1)1 + c241 = -c1 + 4c2
– 5c2 = 5 c2 = 1 c1 = -1
• tn = (-1)n+1 + 4n
• Always test solution on small values!
Repeated roots for char. eqn
• tn - 5tn-1 + 8tn-2 – 4tn-3= 0
– boundary conditions: tn = n for n = 0, 1, 2
• x3 - 5x2 + 8x – 4 = 0
• (x-1)(x-2)2 roots are 1, 2, 2
• Solution is of form c1(1)n + c22n + c3n2n
– If root is repeated third time, then n22n term, and so on
Solving for constants
• tn = c1(1)n + c22n + c3n2n
• Use base cases to solve for constants– t0 = 0 = c1(1)0 + c220 + c30 20 = c1 + c2
– t1 = 1 = c1(1)1 + c221 + c31 21 = c1 + 2c2 + 2c3
– t2 = 2 = c1(1)2 + c222 + c32 22 = c1 + 4c2 + 8c3
– c1 = -2, c2 = 2, c3 = -1/2
• tn = 2n+1 – n2n-1 – 2
• Test the solution on small values!
Inhomogeneous Equation
• tn - 2tn-1 = 3n
– base case value for t0 only
• (x – 2) (x-3) = 0– (x-2) term comes from homogeneous solution
– If rhs is of form bn poly(n) of degree d• In this case, b = 3, poly (n) = 1 is of degree 0
– Plug (x-b)d+1 into characteristic equation
Solving for constants
• (x – 2) (x-3) = 0
• tn = c12n + c23n
• Solve for c1 and c2 with only t0 base case
• This is only 1 equation and 2 unknowns
• Use recurrence to generate extra equations– tn - 2tn-1 = 3n t1 = 2t0 + 3
• Now we have two equations– t0 = c120 + c230 = c1 + c2
– t1 = 2t0 + 3 = c121 + c231 = 2c1 + 3c2
– c1 = t0 – 3 and c2 = 3
• tn = (t0-3)2n + 3n+1
Changing variable
• tn – 3tn/2 = n if n is a power of 2– t1 = 1
• Let n = 2i and si = tn
• si – 3si-1 = 2i for i >= 1– s0 = 1
• (x-3)(x-2) = 0– x-3 from characteristic equation
– x-2 bnpoly(n) rhs
Solving for constants
• (x-3)(x-2) = 0
• si = c13i + c22i
• Generating two equations– t1 = s0 = 1 = c130 + c220 = c1 + c2
– t2 = s1 = 3t1+2 = 5 = c131 + c221 = 3c1 + 2c2
– c1 = 3, c2 = -2
• si = 3i+1 – 2i+1 for i >= 0
• tn = 3nlg 3 – 2n for n a power of 2 >= 1
Example: Up-down Permutations
• An up-down permutation is a permutation of the numbers from 1 to n such that the numbers strictly increase to n and then decrease thereafter
• Examples– 1376542, 7654321, 3476521
• Let tn denote the number of up-down permutations
– What is recurrence relation for tn?
– What is solution?
Example: Towers of Hanoi
• Suppose we have two disks of each size.
• Let n be the number of sizes of disks– What is recurrence relation?
– What is solution?