Midterm Examination. STA 205: Probability and Measure Theory. Thursday, 2010 Oct 21, 11:40-12:55 pm

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Transcription:

Midterm Examination STA 205: Probability and Measure Theory Thursday, 2010 Oct 21, 11:40-12:55 pm This is a closed-book examination. You may use a single sheet of prepared notes, if you wish, but you may not share materials. If a question seems ambiguous or confusing please ask me don t guess, and don t discuss questions with others. Unless a problem states otherwise, you must show your work to get partial credit. There are blank worksheets at the end of the test for this. It is to your advantage to write your solutions as clearly as possible. Good luck. Print Name: 1. /20 2. /20 3. /20 4. /20 5. /20 6. /20 Total: /120

Problem 1. Let (Ω, F, P) be the unit interval Ω = (0, 1] with the Borel sets F = B and Lebesgue measure P = λ. a. (5) Does there exist a random variable ζ for which ζ L p for every 0 < p <, but ζ L? Find (and verify) one, or prove none exists. Yes No ζ(ω) = b. (15) Let Z(ω) = ω and, for n N and ω Ω, set: X n = 1 n nz Y n = 2 n 2 n Z. where x denotes the greatest integer less than or equal to a real number x. Prove that: i. Y n increases monotonically to Z; ii. X n Z but not monotonically. Fall 2010 1 2010 Oct 21

Problem 2. Let (Ω, F, P) be the unit interval Ω = (0, 1] with the Borel sets F = B and Lebesgue measure P = λ. For each integer n N set X n (ω) = n 1 (0,1/n 2 ](ω). a. (4) Does X n (ω) converge at each point ω Ω? If so, find (and verify) X(ω) lim n X n (ω); if not, tell why. Circle one: Yes No X(ω) = Reasoning: b. (4) Does Ω X n X dp 0? Y N Show why... c. (4) Does Ω X n X 2 dp 0? Y N Show why... d. (4) Is {X n } uniformly dominated by a positive integrable RV Y? If so, find a suitable Y ; if not, explain. Y N e. (4) Is {Xn 2 } uniformly dominated by a positive integrable RV Y? If so, find a suitable Y ; if not, explain. Y N Fall 2010 2 2010 Oct 21

Problem 3. Let (Ω, F, P) be the probability space Ω = {a, b, c, d} with just four points and define a collection of sets by F = {, {a}, {b, c}, {d}, {a, b, c}, {a, d}, {b, c, d}, Ω } a. (5) Is F a field? If yes, state and illustrate what conditions need to be verified (you don t have to verify these conditions for every possible combination of sets); if no, give a counter-example. Circle one: Yes No Reasoning: b. (5) Define two functions X, Y : Ω R by X(a) = 1 X(b) = 2 X(c) = 2 X(d) = 1 Y (a) = 1 Y (b) = 2 Y (c) = 3 Y (d) = 4 Enumerate explicitly the elements of σ(x): σ(x) = c. (5) Is X a Random Variable on (Ω, F, P)? Yes No. Why? d. (5) Is Y a Random Variable on (Ω, F, P)? Yes No. Why? Fall 2010 3 2010 Oct 21

Problem 4. For n N let U n iid Un(0, 1) be independent uniformly-distributed random variables, and set Z n := log(u n ). Give short answers below (in the boxes), with a brief justification: a. (4) Is {Z n } uniformly integrable (U.I.)? Yes No Why? b. (4) P [ {Z n > n} for infinitely-many n ] = Why? c. (4) P [ {Z n > log n} for infinitely-many n ] = Why? d. (4) Set X n := { min Z } k ; find limn P[n X n > 1] = 1 k n Why? e. (4) Set Y n := { max 1 k n Z k}; find lim n P [ Y n 3 + log n ] = Why? Fall 2010 4 2010 Oct 21

Problem 5. Let X n be independent random variables on a probability space (Ω, F, P) with common distribution µ(dx) on (R, B) given by Define µ ( (a, b] ) = 1/a 2 1/b 2, 1 a < b. S n := n k=1 X k X := Sn /n. a. (6) Are the {X n } Uniformly Integrable? Justify your answer. b. (6) Are the { X n } Uniformly Integrable? Justify your answer. c. (8) Does { X n } converge in almost-surely? If so, to what? If not, why? Fall 2010 5 2010 Oct 21

Problem 6. For 2pt each, write your answers in the boxes provided, or circle True or False. No explanations are required. In parts a & b, g = g(x) denotes a completely arbitrary Borel measureable function, not necessarily continuous. a. If X is simple 1 and Y = g(x) then Y is simple. T F b. If X n 0 a.s. and Y n = g(x n ) then Y n converges a.s. T F c. If X n 0 in L 4 then X n 0 in L 2. T F d. If X is continuous 2 and Y = cos(x) then Y is continuous. T F e. If X is abs. cont. 3 and Y = 1/X 2 then Y is abs. cont. T F f. If E X n + 1 2 40 for each n N then {X n } is U.I. T F g. If X L 2 and Y L 4 then for what (if any) p is X Y L p? h. If 0 X L 1 then EX E [ X ]. T F i. If X L 2 and Y n := n 1 { X >n} then Y n 0 in L 2 as n. T F j. If E[X 4 ] = 96, give a non-trivial upper bound for P[X > 4]: 1 A simple R.V. is one that takes on only finitely-many different values. 2 This is a sloppy but common way of saying that the random variable has a continuous distribution, i.e., that its CDF F(x) is a continuous function of x R. 3 A distribution is absolutely continuous if it is the integral of a density function. Fall 2010 6 2010 Oct 21

Blank Worksheet Fall 2010 7 2010 Oct 21

Another Blank Worksheet Fall 2010 8 2010 Oct 21

Name Notation pdf/pmf Range Mean µ Variance σ 2 Beta Be(α,β) f(x) = Γ(α+β) Γ(α)Γ(β) xα 1 (1 x) β 1 x (0,1) α α+β αβ (α+β) 2 (α+β+1) Binomial Bi(n,p) f(x) = ( n x) p x q (n x) x 0,,n n p n p q (q = 1 p) Exponential Ex(λ) f(x) = λe λx x R + 1/λ 1/λ 2 Gamma Ga(α,λ) f(x) = λα Γ(α) xα 1 e λx x R + α/λ α/λ 2 Geometric Ge(p) f(x) = p q x x Z + q/p q/p 2 (q = 1 p) HyperGeo. HG(n,A,B) f(x) = (A x)( B f(y) = p q y 1 y {1,...} 1/p q/p 2 (y = x + 1) n x) ( A+B n ) x 0,,n n P n P (1 P) N n N 1 Logistic Lo(µ,β) f(x) = e (x µ)/β β[1+e (x µ)/β ] 2 x R µ π 2 β 2 /3 (P = A A+B ) Log Normal LN(µ,σ 2 ( 1 ) f(x) = x 2πσ 2e (log x µ)2 /2σ 2 x R + e µ+σ2 /2 e 2µ+σ2 e σ 2 1 ) Neg. Binom. NB(α,p) f(x) = ( ) x+α 1 x p α q x x Z + αq/p αq/p 2 (q = 1 p) f(y) = ( y 1 y α) p α q y α y {α,...} α/p αq/p 2 (y = x + α) Normal No(µ,σ 2 ) f(x) = 1 2πσ 2 e (x µ)2 /2σ 2 x R µ σ 2 Pareto Pa(α,ǫ) f(x) = α ǫ α /x α+1 x (ǫ, ) ǫ α α 1 ǫ 2 α (α 1) 2 (α 2) Poisson Po(λ) f(x) = λx x! e λ x Z + λ λ Snedecor F F(ν 1,ν 2 ) f(x) = Γ( ν 1 +ν 2 2 )(ν 1 /ν 2 ) ν 1 /2 Student t t(ν) f(x) = x ν 1 2 2 Γ( ν 1 2 )Γ( ν 2 2 ) [ 1 + ν 1 ν 2 x ] ν 1 +ν 2 2 x R + ν 2 ν 2 2 ( ν2 ν 2 2 Γ( ν+1 2 ) Γ( ν 2 ) πν [1 + x2 /ν] (ν+1)/2 x R 0 ν/(ν 2) Uniform Un(a,b) f(x) = 1 a+b b a x (a,b) 2 Weibull We(α,β) f(x) = αβ x α 1 e β xα x R + Γ(1+α 1 ) β 1/α (b a) 2 12 Γ(1+2/α) Γ 2 (1+1/α) β 2/α ) 2 2(ν1 +ν 2 2) ν 1 (ν 2 4)