statistical modelling team that is developing models based on independent non identically distributed random variables. You consider the following model - Gamma(awi, B), i = {1, ..., N} where a, B, and w1,.. ,wN are positive scalar parameters (the gamma distribution has several common parametrisations, here we define the p.d.f. of a random variable X ~ Gamma(a, B) as f(x) https://mathworld.wolfram.com/GammaFunction.html). a a-exp{-Bx} for x > 0, where r(-) denotes the gamma function, see You have been asked to explore the statistical properties of the maximum likelihood estimator of B assuming that a and wi,...,WN are known. Assume that a > 2 andE,wi > 1. Let X = X1, ..., XN. You decide to perform the following analyses: 1. State the likelihood function L(B; X) = f(X; B). 2. Derive the maximum likelihood estimator for 3, denoted by B(X). 3. Show that the bias of B(X) is given by B(B) = B/(a Ewi - 1). 4. Derive the expression for the Cramer Rao Lower Bound for biased estimator of 3 with bias B(B) = B/(aE1wi - 1). %D 5. Let a = 4 and w; = i for i = {1,. , N}. Use simulation in R to calculate the variance of B(X) for B = {1,2, 4, 8, 16} and for different sample sizes N E [1, 20]. Briefly discuss your results and present appropriate graphical summaries. How close are the variances of B(X) to the theoretical lower bound found in Part 4?

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You are a statistical trainee actuary working for an insurance company. You are part of a
statistical modelling team that is developing models based on independent non identically
distributed random variables. You consider the following model
X; ~ Gamma(awi, B), i= {1,..., N}
where a, B, and w1,..,WN are positive scalar parameters (the gamma distribution has several
common parametrisations, here we define the p.d.f. of a random variable X ~
as f(x)
https://mathworld.wolfram.com/GammaFunction.html).
Gamma(a, B)
Hora-1 exp{-Bx} for x > 0, where r(-) denotes the gamma function, see
You have been asked to explore the statistical properties of the maximum likelihood estimator
of B assuming that a and wi,... ,WN are known. Assume that a > 2 andE,wi > 1.
Let X = X1,..., XN. You decide to perform the following analyses:
1. State the likelihood function L(B; X) = f(X; B).
2. Derive the maximum likelihood estimator for 3, denoted by B(X).
3. Show that the bias of 3(X) is given by B(B) = B/(a Ewi – 1).
4. Derive the expression for the Cramer Rao Lower Bound for biased estimator of 3 with
bias B(B) = B/(a Ewi – 1).
5. Let a = 4 and w; = i for i = {1,…, N}. Use simulation in R to calculate the variance
of B(X) for 3 = {1,2,4,8, 16} and for different sample sizes N E [1,20].
Briefly discuss your results and present appropriate graphical summaries. How close
are the variances of B(X) to the theoretical lower bound found in Part 4?
Transcribed Image Text:You are a statistical trainee actuary working for an insurance company. You are part of a statistical modelling team that is developing models based on independent non identically distributed random variables. You consider the following model X; ~ Gamma(awi, B), i= {1,..., N} where a, B, and w1,..,WN are positive scalar parameters (the gamma distribution has several common parametrisations, here we define the p.d.f. of a random variable X ~ as f(x) https://mathworld.wolfram.com/GammaFunction.html). Gamma(a, B) Hora-1 exp{-Bx} for x > 0, where r(-) denotes the gamma function, see You have been asked to explore the statistical properties of the maximum likelihood estimator of B assuming that a and wi,... ,WN are known. Assume that a > 2 andE,wi > 1. Let X = X1,..., XN. You decide to perform the following analyses: 1. State the likelihood function L(B; X) = f(X; B). 2. Derive the maximum likelihood estimator for 3, denoted by B(X). 3. Show that the bias of 3(X) is given by B(B) = B/(a Ewi – 1). 4. Derive the expression for the Cramer Rao Lower Bound for biased estimator of 3 with bias B(B) = B/(a Ewi – 1). 5. Let a = 4 and w; = i for i = {1,…, N}. Use simulation in R to calculate the variance of B(X) for 3 = {1,2,4,8, 16} and for different sample sizes N E [1,20]. Briefly discuss your results and present appropriate graphical summaries. How close are the variances of B(X) to the theoretical lower bound found in Part 4?
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