The Ballot Problem. In an election, candidate A receives n votes and candidate B receives m votes, where n > m . Assuming that all of the ( n + m ) ! n ! m ! orderings of the votes are equally likely, let P n , m denote the probability that A is always ahead in the counting of the votes. a. Compute P 2 , 1 , P 3 , 1 , P 3 , 1 , P 3 , 2 , P 4 , 1 , P 4 , 2 , P 4 , 3 . b. Find P n , 1 , P m , 2 . c. On the basis of your results in parts (a) and (b), conjecture the value of P n , m . d. Derive a recursion for P n , m in terms of P n − 1 , m and P n , m − 1 by conditioning on who receives the last vote. e. Use part (d) to verify your conjecture in part (c) by an induction proof on n + m .
The Ballot Problem. In an election, candidate A receives n votes and candidate B receives m votes, where n > m . Assuming that all of the ( n + m ) ! n ! m ! orderings of the votes are equally likely, let P n , m denote the probability that A is always ahead in the counting of the votes. a. Compute P 2 , 1 , P 3 , 1 , P 3 , 1 , P 3 , 2 , P 4 , 1 , P 4 , 2 , P 4 , 3 . b. Find P n , 1 , P m , 2 . c. On the basis of your results in parts (a) and (b), conjecture the value of P n , m . d. Derive a recursion for P n , m in terms of P n − 1 , m and P n , m − 1 by conditioning on who receives the last vote. e. Use part (d) to verify your conjecture in part (c) by an induction proof on n + m .
Solution Summary: The author explains how the probabilities are calculated for n+m people voting for A or B, with votes being read in random order.
The Ballot Problem. In an election, candidate A receives n votes and candidate B receives m votes, where
n
>
m
. Assuming that all of the
(
n
+
m
)
!
n
!
m
!
orderings of the votes are equally likely, let
P
n
,
m
denote the probability that A is always ahead in the counting of the votes.
a. Compute
P
2
,
1
,
P
3
,
1
,
P
3
,
1
,
P
3
,
2
,
P
4
,
1
,
P
4
,
2
,
P
4
,
3
.
b. Find
P
n
,
1
,
P
m
,
2
.
c. On the basis of your results in parts (a) and (b), conjecture the value of
P
n
,
m
.
d. Derive a recursion for
P
n
,
m
in terms of
P
n
−
1
,
m
and
P
n
,
m
−
1
by conditioning on who receives the last vote.
e. Use part (d) to verify your conjecture in part (c) by an induction proof on
n
+
m
.
Q1. A group of five applicants for a pair of identical jobs consists of three men and two
women. The employer is to select two of the five applicants for the jobs. Let S
denote the set of all possible outcomes for the employer's selection. Let A denote
the subset of outcomes corresponding to the selection of two men and B the subset
corresponding to the selection of at least one woman. List the outcomes in A, B,
AUB, AN B, and An B. (Denote the different men and women by M₁, M2, M3
and W₁, W2, respectively.)
Q3 (8 points)
Q3. A survey classified a large number of adults according to whether they were diag-
nosed as needing eyeglasses to correct their reading vision and whether they use
eyeglasses when reading. The proportions falling into the four resulting categories
are given in the following table:
Use Eyeglasses for Reading
Needs glasses Yes
No
Yes
0.44
0.14
No
0.02
0.40
If a single adult is selected from the large group, find the probabilities of the events
defined below. The adult
(a) needs glasses.
(b) needs glasses but does not use them.
(c) uses glasses whether the glasses are needed or not.
4. (i) Let a discrete sample space be given by
N = {W1, W2, W3, W4},
and let a probability measure P on be given by
P(w1) = 0.2, P(w2) = 0.2, P(w3) = 0.5, P(wa) = 0.1.
Consider the random variables X1, X2 → R defined by
X₁(w1) = 1, X₁(w2) = 2,
X2(w1) = 2, X2 (w2) = 2,
Find the joint distribution of X1, X2.
(ii)
X1(W3) = 1, X₁(w4) = 1,
X2(W3) = 1, X2(w4) = 2.
[4 Marks]
Let Y, Z be random variables on a probability space (, F, P).
Let the random vector (Y, Z) take on values in the set [0, 1] x [0,2] and let the
joint distribution of Y, Z on [0, 1] x [0,2] be given by
1
dPy,z (y, z) ==(y²z+yz2) dy dz.
harks 12 Find the distribution Py of the random variable Y.
[8 Marks]
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