Let Y1, Y2, , Yn be independent, normal random variables, each with mean μ and variance σ^2.
(a) Find the density function of 
f Y(u) =
(b) If σ^2 = 25 and n = 9, what is the probability that the sample mean, Y, takes on a value that is within one unit of the population mean, μ?
That is, find P(|Y − μ| ≤ 1). (Round your answer to four decimal places.)
P(|Y − μ| ≤ 1) =
(c) If σ^2 = 25, find P(|Y − μ| ≤ 1) if n = 49, n = 64, and n = 81. (Round your answers to four decimal places.)
n = 49 P(|Y − μ| ≤ 1) =
n = 64 P(|Y − μ| ≤ 1) =
n = 81 P(|Y − μ| ≤ 1) =





Let Y1, Y2, , Yn be independent, normal random variables, each with mean μ and variance...
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Let Y1, Y2, ..., Yn be independent random variables
each having uniform distribution on the interval (0, θ).
(a) Find the distribution of Y(n) and find its expected
value.
(b) Find the joint density function of Y(i) and Y(j) where 1 ≤ i
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Let Y1, Y2, ..., Yn be independent random variables
each having uniform distribution on the interval (0, θ)
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