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Fall 2002 CMSC 203 - Discrete Structures 1
Now it’s Time for…
Recurrence
Relations
Fall 2002 CMSC 203 - Discrete Structures 2
Recurrence Relations
A recurrence relation for the sequence {an} is an
equation that expresses an is terms of one or
more of the previous terms of the sequence,
namely, a0, a1, …, an-1, for all integers n with
n  n0, where n0 is a nonnegative integer.
A sequence is called a solution of a recurrence
relation if it terms satisfy the recurrence
relation.
Fall 2002 CMSC 203 - Discrete Structures 3
Recurrence Relations
In other words, a recurrence relation is like a
recursively defined sequence, but without
specifying any initial values (initial conditions).
Therefore, the same recurrence relation can have
(and usually has) multiple solutions.
If both the initial conditions and the recurrence
relation are specified, then the sequence is
uniquely determined.
Fall 2002 CMSC 203 - Discrete Structures 4
Recurrence Relations
Example:
Consider the recurrence relation
an = 2an-1 – an-2 for n = 2, 3, 4, …
Is the sequence {an} with an=3n a solution of this
recurrence relation?
For n  2 we see that
2an-1 – an-2 = 2(3(n – 1)) – 3(n – 2) = 3n = an.
Therefore, {an} with an=3n is a solution of the
recurrence relation.
Fall 2002 CMSC 203 - Discrete Structures 5
Recurrence Relations
Is the sequence {an} with an=5 a solution of the
same recurrence relation?
For n  2 we see that
2an-1 – an-2 = 25 - 5 = 5 = an.
Therefore, {an} with an=5 is also a solution of the
recurrence relation.
Fall 2002 CMSC 203 - Discrete Structures 6
Modeling with Recurrence Relations
Example:
Someone deposits $10,000 in a savings account at
a bank yielding 5% per year with interest
compounded annually. How much money will be in
the account after 30 years?
Solution:
Let Pn denote the amount in the account after n
years.
How can we determine Pn on the basis of Pn-1?
Fall 2002 CMSC 203 - Discrete Structures 7
Modeling with Recurrence Relations
We can derive the following recurrence relation:
Pn = Pn-1 + 0.05Pn-1 = 1.05Pn-1.
The initial condition is P0 = 10,000.
Then we have:
P1 = 1.05P0
P2 = 1.05P1 = (1.05)2P0
P3 = 1.05P2 = (1.05)3P0
…
Pn = 1.05Pn-1 = (1.05)nP0
We now have a formula to calculate Pn for any
natural number n and can avoid the iteration.
Fall 2002 CMSC 203 - Discrete Structures 8
Modeling with Recurrence Relations
Let us use this formula to find P30 under the
initial condition P0 = 10,000:
P30 = (1.05)3010,000 = 43,219.42
After 30 years, the account contains $43,219.42.
Fall 2002 CMSC 203 - Discrete Structures 9
Modeling with Recurrence Relations
Another example:
Let an denote the number of bit strings of length
n that do not have two consecutive 0s (“valid
strings”). Find a recurrence relation and give
initial conditions for the sequence {an}.
Solution:
Idea: The number of valid strings equals the
number of valid strings ending with a 0 plus the
number of valid strings ending with a 1.
Fall 2002 CMSC 203 - Discrete Structures 10
Modeling with Recurrence Relations
Let us assume that n  3, so that the string
contains at least 3 bits.
Let us further assume that we know the number
an-1 of valid strings of length (n – 1).
Then how many valid strings of length n are there,
if the string ends with a 1?
There are an-1 such strings, namely the set of
valid strings of length (n – 1) with a 1 appended to
them.
Note: Whenever we append a 1 to a valid string,
that string remains valid.
Fall 2002 CMSC 203 - Discrete Structures 11
Modeling with Recurrence Relations
Now we need to know: How many valid strings of
length n are there, if the string ends with a 0?
Valid strings of length n ending with a 0 must
have a 1 as their (n – 1)st bit (otherwise they
would end with 00 and would not be valid).
And what is the number of valid strings of length
(n – 1) that end with a 1?
We already know that there are an-1 strings of
length n that end with a 1.
Therefore, there are an-2 strings of length (n – 1)
that end with a 1.
Fall 2002 CMSC 203 - Discrete Structures 12
Modeling with Recurrence Relations
So there are an-2 valid strings of length n that
end with a 0 (all valid strings of length (n – 2)
with 10 appended to them).
As we said before, the number of valid strings is
the number of valid strings ending with a 0 plus
the number of valid strings ending with a 1.
That gives us the following recurrence relation:
an = an-1 + an-2
Fall 2002 CMSC 203 - Discrete Structures 13
Modeling with Recurrence Relations
What are the initial conditions?
a1 = 2 (0 and 1)
a2 = 3 (01, 10, and 11)
a3 = a2 + a1 = 3 + 2 = 5
a4 = a3 + a2 = 5 + 3 = 8
a5 = a4 + a3 = 8 + 5 = 13
…
This sequence satisfies the same recurrence
relation as the Fibonacci sequence.
Since a1 = f3 and a2 = f4, we have an = fn+2.
Fall 2002 CMSC 203 - Discrete Structures 14
Solving Recurrence Relations
In general, we would prefer to have an explicit
formula to compute the value of an rather than
conducting n iterations.
For one class of recurrence relations, we can
obtain such formulas in a systematic way.
Those are the recurrence relations that express
the terms of a sequence as linear combinations of
previous terms.
Fall 2002 CMSC 203 - Discrete Structures 15
Solving Recurrence Relations
Definition: A linear homogeneous recurrence
relation of degree k with constant coefficients is
a recurrence relation of the form:
an = c1an-1 + c2an-2 + … + ckan-k,
Where c1, c2, …, ck are real numbers, and ck  0.
A sequence satisfying such a recurrence relation
is uniquely determined by the recurrence relation
and the k initial conditions
a0 = C0, a1 = C1, a2 = C2, …, ak-1 = Ck-1.
Fall 2002 CMSC 203 - Discrete Structures 16
Solving Recurrence Relations
Examples:
The recurrence relation Pn = (1.05)Pn-1
is a linear homogeneous recurrence relation of
degree one.
The recurrence relation fn = fn-1 + fn-2
is a linear homogeneous recurrence relation of
degree two.
The recurrence relation an = an-5
is a linear homogeneous recurrence relation of
degree five.
Fall 2002 CMSC 203 - Discrete Structures 17
Solving Recurrence Relations
Basically, when solving such recurrence relations,
we try to find solutions of the form an = rn,
where r is a constant.
an = rn is a solution of the recurrence relation
an = c1an-1 + c2an-2 + … + ckan-k if and only if
rn = c1rn-1 + c2rn-2 + … + ckrn-k.
Divide this equation by rn-k and subtract the
right-hand side from the left:
rk - c1rk-1 - c2rk-2 - … - ck-1r - ck = 0
This is called the characteristic equation of the
recurrence relation.
Fall 2002 CMSC 203 - Discrete Structures 18
Solving Recurrence Relations
The solutions of this equation are called the
characteristic roots of the recurrence relation.
Let us consider linear homogeneous recurrence
relations of degree two.
Theorem: Let c1 and c2 be real numbers. Suppose
that r2 – c1r – c2 = 0 has two distinct roots r1 and r2.
Then the sequence {an} is a solution of the
recurrence relation an = c1an-1 + c2an-2 if and only if an
= 1r1
n + 2r2
n for n = 0, 1, 2, …, where 1 and 2 are
constants.
See pp. 321 and 322 for the proof.
Fall 2002 CMSC 203 - Discrete Structures 19
Solving Recurrence Relations
Example: What is the solution of the recurrence
relation an = an-1 + 2an-2 with a0 = 2 and a1 = 7 ?
Solution: The characteristic equation of the
recurrence relation is r2 – r – 2 = 0.
Its roots are r = 2 and r = -1.
Hence, the sequence {an} is a solution to the
recurrence relation if and only if:
an = 12n + 2(-1)n for some constants 1 and 2.
Fall 2002 CMSC 203 - Discrete Structures 20
Solving Recurrence Relations
Given the equation an = 12n + 2(-1)n and the initial
conditions a0 = 2 and a1 = 7, it follows that
a0 = 2 = 1 + 2
a1 = 7 = 12 + 2 (-1)
Solving these two equations gives us
1 = 3 and 2 = -1.
Therefore, the solution to the recurrence relation
and initial conditions is the sequence {an} with
an = 32n – (-1)n.
Fall 2002 CMSC 203 - Discrete Structures 21
Solving Recurrence Relations
an = rn is a solution of the linear homogeneous
recurrence relation
an = c1an-1 + c2an-2 + … + ckan-k
if and only if
rn = c1rn-1 + c2rn-2 + … + ckrn-k.
Divide this equation by rn-k and subtract the
right-hand side from the left:
rk - c1rk-1 - c2rk-2 - … - ck-1r - ck = 0
This is called the characteristic equation of the
recurrence relation.
Fall 2002 CMSC 203 - Discrete Structures 22
Solving Recurrence Relations
The solutions of this equation are called the
characteristic roots of the recurrence relation.
Let us consider linear homogeneous recurrence
relations of degree two.
Theorem: Let c1 and c2 be real numbers. Suppose
that r2 – c1r – c2 = 0 has two distinct roots r1 and r2.
Then the sequence {an} is a solution of the
recurrence relation an = c1an-1 + c2an-2 if and only if an
= 1r1
n + 2r2
n for n = 0, 1, 2, …, where 1 and 2 are
constants.
See pp. 321 and 322 for the proof.
Fall 2002 CMSC 203 - Discrete Structures 23
Solving Recurrence Relations
Example: Give an explicit formula for the Fibonacci
numbers.
Solution: The Fibonacci numbers satisfy the
recurrence relation fn = fn-1 + fn-2 with initial
conditions f0 = 0 and f1 = 1.
The characteristic equation is r2 – r – 1 = 0.
Its roots are
2
5
1
,
2
5
1
2
1



 r
r
Fall 2002 CMSC 203 - Discrete Structures 24
Solving Recurrence Relations
Therefore, the Fibonacci numbers are given by
n
n
n
f 






 








 

2
5
1
2
5
1
2
1 

for some constants 1 and 2.
We can determine values for these constants so
that the sequence meets the conditions f0 = 0
and f1 = 1:
0
2
1
0 

 

f
1
2
5
1
2
5
1
2
1
1 







 








 
 

f
Fall 2002 CMSC 203 - Discrete Structures 25
Solving Recurrence Relations
The unique solution to this system of two
equations and two variables is
5
1
,
5
1
2
1 

 

So finally we obtained an explicit formula for the
Fibonacci numbers:
n
n
n
f 






 








 

2
5
1
5
1
2
5
1
5
1
Fall 2002 CMSC 203 - Discrete Structures 26
Solving Recurrence Relations
But what happens if the characteristic equation
has only one root?
How can we then match our equation with the initial
conditions a0 and a1 ?
Theorem: Let c1 and c2 be real numbers with c2 0.
Suppose that r2 – c1r – c2 = 0 has only one root r0.
A sequence {an} is a solution of the recurrence
relation an = c1an-1 + c2an-2 if and only if
an = 1r0
n + 2nr0
n, for n = 0, 1, 2, …, where 1 and 2
are constants.
Fall 2002 CMSC 203 - Discrete Structures 27
Solving Recurrence Relations
Example: What is the solution of the recurrence
relation an = 6an-1 – 9an-2 with a0 = 1 and a1 = 6?
Solution: The only root of r2 – 6r + 9 = 0 is r0 = 3.
Hence, the solution to the recurrence relation is
an = 13n + 2n3n for some constants 1 and 2.
To match the initial condition, we need
a0 = 1 = 1
a1 = 6 = 13 + 23
Solving these equations yields 1 = 1 and 2 = 1.
Consequently, the overall solution is given by
an = 3n + n3n.

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pdf of recurrence relation which is used in statistics

  • 1. Fall 2002 CMSC 203 - Discrete Structures 1 Now it’s Time for… Recurrence Relations
  • 2. Fall 2002 CMSC 203 - Discrete Structures 2 Recurrence Relations A recurrence relation for the sequence {an} is an equation that expresses an is terms of one or more of the previous terms of the sequence, namely, a0, a1, …, an-1, for all integers n with n  n0, where n0 is a nonnegative integer. A sequence is called a solution of a recurrence relation if it terms satisfy the recurrence relation.
  • 3. Fall 2002 CMSC 203 - Discrete Structures 3 Recurrence Relations In other words, a recurrence relation is like a recursively defined sequence, but without specifying any initial values (initial conditions). Therefore, the same recurrence relation can have (and usually has) multiple solutions. If both the initial conditions and the recurrence relation are specified, then the sequence is uniquely determined.
  • 4. Fall 2002 CMSC 203 - Discrete Structures 4 Recurrence Relations Example: Consider the recurrence relation an = 2an-1 – an-2 for n = 2, 3, 4, … Is the sequence {an} with an=3n a solution of this recurrence relation? For n  2 we see that 2an-1 – an-2 = 2(3(n – 1)) – 3(n – 2) = 3n = an. Therefore, {an} with an=3n is a solution of the recurrence relation.
  • 5. Fall 2002 CMSC 203 - Discrete Structures 5 Recurrence Relations Is the sequence {an} with an=5 a solution of the same recurrence relation? For n  2 we see that 2an-1 – an-2 = 25 - 5 = 5 = an. Therefore, {an} with an=5 is also a solution of the recurrence relation.
  • 6. Fall 2002 CMSC 203 - Discrete Structures 6 Modeling with Recurrence Relations Example: Someone deposits $10,000 in a savings account at a bank yielding 5% per year with interest compounded annually. How much money will be in the account after 30 years? Solution: Let Pn denote the amount in the account after n years. How can we determine Pn on the basis of Pn-1?
  • 7. Fall 2002 CMSC 203 - Discrete Structures 7 Modeling with Recurrence Relations We can derive the following recurrence relation: Pn = Pn-1 + 0.05Pn-1 = 1.05Pn-1. The initial condition is P0 = 10,000. Then we have: P1 = 1.05P0 P2 = 1.05P1 = (1.05)2P0 P3 = 1.05P2 = (1.05)3P0 … Pn = 1.05Pn-1 = (1.05)nP0 We now have a formula to calculate Pn for any natural number n and can avoid the iteration.
  • 8. Fall 2002 CMSC 203 - Discrete Structures 8 Modeling with Recurrence Relations Let us use this formula to find P30 under the initial condition P0 = 10,000: P30 = (1.05)3010,000 = 43,219.42 After 30 years, the account contains $43,219.42.
  • 9. Fall 2002 CMSC 203 - Discrete Structures 9 Modeling with Recurrence Relations Another example: Let an denote the number of bit strings of length n that do not have two consecutive 0s (“valid strings”). Find a recurrence relation and give initial conditions for the sequence {an}. Solution: Idea: The number of valid strings equals the number of valid strings ending with a 0 plus the number of valid strings ending with a 1.
  • 10. Fall 2002 CMSC 203 - Discrete Structures 10 Modeling with Recurrence Relations Let us assume that n  3, so that the string contains at least 3 bits. Let us further assume that we know the number an-1 of valid strings of length (n – 1). Then how many valid strings of length n are there, if the string ends with a 1? There are an-1 such strings, namely the set of valid strings of length (n – 1) with a 1 appended to them. Note: Whenever we append a 1 to a valid string, that string remains valid.
  • 11. Fall 2002 CMSC 203 - Discrete Structures 11 Modeling with Recurrence Relations Now we need to know: How many valid strings of length n are there, if the string ends with a 0? Valid strings of length n ending with a 0 must have a 1 as their (n – 1)st bit (otherwise they would end with 00 and would not be valid). And what is the number of valid strings of length (n – 1) that end with a 1? We already know that there are an-1 strings of length n that end with a 1. Therefore, there are an-2 strings of length (n – 1) that end with a 1.
  • 12. Fall 2002 CMSC 203 - Discrete Structures 12 Modeling with Recurrence Relations So there are an-2 valid strings of length n that end with a 0 (all valid strings of length (n – 2) with 10 appended to them). As we said before, the number of valid strings is the number of valid strings ending with a 0 plus the number of valid strings ending with a 1. That gives us the following recurrence relation: an = an-1 + an-2
  • 13. Fall 2002 CMSC 203 - Discrete Structures 13 Modeling with Recurrence Relations What are the initial conditions? a1 = 2 (0 and 1) a2 = 3 (01, 10, and 11) a3 = a2 + a1 = 3 + 2 = 5 a4 = a3 + a2 = 5 + 3 = 8 a5 = a4 + a3 = 8 + 5 = 13 … This sequence satisfies the same recurrence relation as the Fibonacci sequence. Since a1 = f3 and a2 = f4, we have an = fn+2.
  • 14. Fall 2002 CMSC 203 - Discrete Structures 14 Solving Recurrence Relations In general, we would prefer to have an explicit formula to compute the value of an rather than conducting n iterations. For one class of recurrence relations, we can obtain such formulas in a systematic way. Those are the recurrence relations that express the terms of a sequence as linear combinations of previous terms.
  • 15. Fall 2002 CMSC 203 - Discrete Structures 15 Solving Recurrence Relations Definition: A linear homogeneous recurrence relation of degree k with constant coefficients is a recurrence relation of the form: an = c1an-1 + c2an-2 + … + ckan-k, Where c1, c2, …, ck are real numbers, and ck  0. A sequence satisfying such a recurrence relation is uniquely determined by the recurrence relation and the k initial conditions a0 = C0, a1 = C1, a2 = C2, …, ak-1 = Ck-1.
  • 16. Fall 2002 CMSC 203 - Discrete Structures 16 Solving Recurrence Relations Examples: The recurrence relation Pn = (1.05)Pn-1 is a linear homogeneous recurrence relation of degree one. The recurrence relation fn = fn-1 + fn-2 is a linear homogeneous recurrence relation of degree two. The recurrence relation an = an-5 is a linear homogeneous recurrence relation of degree five.
  • 17. Fall 2002 CMSC 203 - Discrete Structures 17 Solving Recurrence Relations Basically, when solving such recurrence relations, we try to find solutions of the form an = rn, where r is a constant. an = rn is a solution of the recurrence relation an = c1an-1 + c2an-2 + … + ckan-k if and only if rn = c1rn-1 + c2rn-2 + … + ckrn-k. Divide this equation by rn-k and subtract the right-hand side from the left: rk - c1rk-1 - c2rk-2 - … - ck-1r - ck = 0 This is called the characteristic equation of the recurrence relation.
  • 18. Fall 2002 CMSC 203 - Discrete Structures 18 Solving Recurrence Relations The solutions of this equation are called the characteristic roots of the recurrence relation. Let us consider linear homogeneous recurrence relations of degree two. Theorem: Let c1 and c2 be real numbers. Suppose that r2 – c1r – c2 = 0 has two distinct roots r1 and r2. Then the sequence {an} is a solution of the recurrence relation an = c1an-1 + c2an-2 if and only if an = 1r1 n + 2r2 n for n = 0, 1, 2, …, where 1 and 2 are constants. See pp. 321 and 322 for the proof.
  • 19. Fall 2002 CMSC 203 - Discrete Structures 19 Solving Recurrence Relations Example: What is the solution of the recurrence relation an = an-1 + 2an-2 with a0 = 2 and a1 = 7 ? Solution: The characteristic equation of the recurrence relation is r2 – r – 2 = 0. Its roots are r = 2 and r = -1. Hence, the sequence {an} is a solution to the recurrence relation if and only if: an = 12n + 2(-1)n for some constants 1 and 2.
  • 20. Fall 2002 CMSC 203 - Discrete Structures 20 Solving Recurrence Relations Given the equation an = 12n + 2(-1)n and the initial conditions a0 = 2 and a1 = 7, it follows that a0 = 2 = 1 + 2 a1 = 7 = 12 + 2 (-1) Solving these two equations gives us 1 = 3 and 2 = -1. Therefore, the solution to the recurrence relation and initial conditions is the sequence {an} with an = 32n – (-1)n.
  • 21. Fall 2002 CMSC 203 - Discrete Structures 21 Solving Recurrence Relations an = rn is a solution of the linear homogeneous recurrence relation an = c1an-1 + c2an-2 + … + ckan-k if and only if rn = c1rn-1 + c2rn-2 + … + ckrn-k. Divide this equation by rn-k and subtract the right-hand side from the left: rk - c1rk-1 - c2rk-2 - … - ck-1r - ck = 0 This is called the characteristic equation of the recurrence relation.
  • 22. Fall 2002 CMSC 203 - Discrete Structures 22 Solving Recurrence Relations The solutions of this equation are called the characteristic roots of the recurrence relation. Let us consider linear homogeneous recurrence relations of degree two. Theorem: Let c1 and c2 be real numbers. Suppose that r2 – c1r – c2 = 0 has two distinct roots r1 and r2. Then the sequence {an} is a solution of the recurrence relation an = c1an-1 + c2an-2 if and only if an = 1r1 n + 2r2 n for n = 0, 1, 2, …, where 1 and 2 are constants. See pp. 321 and 322 for the proof.
  • 23. Fall 2002 CMSC 203 - Discrete Structures 23 Solving Recurrence Relations Example: Give an explicit formula for the Fibonacci numbers. Solution: The Fibonacci numbers satisfy the recurrence relation fn = fn-1 + fn-2 with initial conditions f0 = 0 and f1 = 1. The characteristic equation is r2 – r – 1 = 0. Its roots are 2 5 1 , 2 5 1 2 1     r r
  • 24. Fall 2002 CMSC 203 - Discrete Structures 24 Solving Recurrence Relations Therefore, the Fibonacci numbers are given by n n n f                     2 5 1 2 5 1 2 1   for some constants 1 and 2. We can determine values for these constants so that the sequence meets the conditions f0 = 0 and f1 = 1: 0 2 1 0      f 1 2 5 1 2 5 1 2 1 1                        f
  • 25. Fall 2002 CMSC 203 - Discrete Structures 25 Solving Recurrence Relations The unique solution to this system of two equations and two variables is 5 1 , 5 1 2 1      So finally we obtained an explicit formula for the Fibonacci numbers: n n n f                     2 5 1 5 1 2 5 1 5 1
  • 26. Fall 2002 CMSC 203 - Discrete Structures 26 Solving Recurrence Relations But what happens if the characteristic equation has only one root? How can we then match our equation with the initial conditions a0 and a1 ? Theorem: Let c1 and c2 be real numbers with c2 0. Suppose that r2 – c1r – c2 = 0 has only one root r0. A sequence {an} is a solution of the recurrence relation an = c1an-1 + c2an-2 if and only if an = 1r0 n + 2nr0 n, for n = 0, 1, 2, …, where 1 and 2 are constants.
  • 27. Fall 2002 CMSC 203 - Discrete Structures 27 Solving Recurrence Relations Example: What is the solution of the recurrence relation an = 6an-1 – 9an-2 with a0 = 1 and a1 = 6? Solution: The only root of r2 – 6r + 9 = 0 is r0 = 3. Hence, the solution to the recurrence relation is an = 13n + 2n3n for some constants 1 and 2. To match the initial condition, we need a0 = 1 = 1 a1 = 6 = 13 + 23 Solving these equations yields 1 = 1 and 2 = 1. Consequently, the overall solution is given by an = 3n + n3n.