CS计算机代考程序代写 F71SM STATISTICAL METHODS

F71SM STATISTICAL METHODS

Tutorial on Section 3 RANDOM VARIABLES

1. A discrete random variable X has probability mass function

x 0 1 2
f(x) 0.25 0.5 0.25

Find the mean, variance, and probability generating function of X.
[E[X] = 1, Var[X] = 0.5, Pgf: G(t) = (1 + t)2/4]

2. A discrete random variable X has probability mass function

f(x) = e−2
2x

x!
x = 0, 1, 2, . . .

Find the mean, variance, probability generating function, and moment generating function
of X. [E[X] = 2, Var[X] = 2, Pgf: G(t) = e2(t−1), Mgf: M(t) = exp(2(et − 1))]

3. A series of independent trials, each with probability p of ‘success’, is continued until the
second success is obtained. Let X be the number of trials required.

Find the probability generating function, and the mean and standard deviation of X.[
Let q = 1− p,G(t) = p2t2(1− qt)−2 for − 1 < qt < 1, µ = 2/p, σ = √ 2(1−p) p ] 4. See tutorial on section 2, Q9. Given that player A wins, find the probability that he does so on his rth throw, and hence show that the expected number of times player A throws in a game which he wins is approximately 5.8. 5. An investor’s income in a year from his investments (X, in units of £1,000) is a random variable with probability mass function x 16 18 20 22 f(x) 0.1 0.2 0.5 0.2 He pays tax on his returns at 25% on any income in excess of £3000. Find the probability distribution of his net income (income after tax), and calculate the means of his gross and net incomes. [E[X] = 19.6(£19, 600), E[Y ] = 15.45(£15, 450)] 6. Consider the random variable with probability density function f(x) = c x3 , 1 < x < 2 (= 0 otherwise). (a) Show that c = 8/3, and find E[X], E[X2], Var[X], and SD[X]. [E(X) = 4/3, E[X2] = (8/3) ln 2,Var[X] ≈ 0.0706, SD[X] ≈ 0.266] (b) Find the distribution function F (x). 7. Let X be a random variable with pdf f(x) = { ex/2 x ≤ 0 e−x/2 x > 0

1

(a) Show that the moment generating function of X is given by M(t) = (1− t2)−1, for
−1 < t < 1, and hence find the mean and standard deviation of X by (i) expanding M(t) as a power series in t, and (ii) by differentiating M(t) and putting t = 0. [E[X] = 0, Var[X] = 2, SD[X] = √ 2] (b) What is the mgf of the r.v. Y , where Y = 2X+3? What are the mean and standard deviation of Y ? [E[Y ] = 3, SD[Y ] = 2 √ 2] 8. Let X be a continuous r.v. and let Y = X2. By considering the cumulative distribution function of Y , FY (y) = P (Y ≤ y) = P (X2 ≤ y), show that the pdfs of Y and X are related by fY (y) = 1 2 y−1/2 (fX( √ y) + fX(− √ y)) , y > 0

Hence find the pdf of Y = X2 where X has pdf

f(x) =
1


e−x

2/2, −∞ < x <∞. 2