2. Suppose that we are attempting to estimate the mean of a Gaussian distribution describing a se...
2. Suppose that we have n independent observations x1, ,Tn from a normal distribution with mean μ and variance σ2, and we want to test (a) Find the maximum likelihood estimator of μ when the null hypothesis is true. (b) Calculate the Likelihood Ratio Test Statistic 7-2 log max L(μ, σ*) )-2 log ( max L(u, i) μισ (c) Explain as clearly as you can what happens to T, when our estimate of σ2 is less than 1. (d) Show...
2. Suppose that we have n independent observations x1,..., xn from a normal distribution with mean μ and variance σ, and we want to test (a) Find the maximum likelihood estimator of μ when the null hypothesis is true. (b) Calculate the Likelihood Ratio Test Statistic 2 lo g max L(μ, σ log | max L( 1) (c) Explain as clearly as you can what happens to T when our estimate of σ2 is less than 1. (d) Show that...
2. Suppose that we have n independent observations x1,..., xn from a normal distribution with mean μ and variance σ, and we want to test (a) Find the maximum likelihood estimator of μ when the null hypothesis is true. (b) Calculate the Likelihood Ratio Test Statistic 2 lo g max L(μ, σ log | max L( 1) (c) Explain as clearly as you can what happens to T when our estimate of σ2 is less than 1. (d) Show that...
4.
Setup:
Suppose you have observations X1,X2,X3,X4,X5 which are i.i.d.
draws from a Gaussian distribution with unknown mean μ and unknown
variance σ2.
Given Facts:
You are given the following:
15∑i=15Xi=0.90,15∑i=15X2i=1.31
Bookmark this page Setup: Suppose you have observations X1, X2, X3, X4, X5 which are i.i.d. draws from a Gaussian distribution with unknown mean u and unknown variance o? Given Facts: You are given the following: x=030, =1:1 Choose a test 1 point possible (graded, results hidden) To test...
Suppose we want to estimate a parameter θ of a certain distribution and we have the following independent point estimates N(0+0.1,0.01) N(0, 0.04) B2 ~ a) What are the mean square errors for these point estimates? (4pts) b) Find a point estimate with mean square error less than or equal to 0.01. (2pts) c) Only use ël and Ộ2, find the unbiased estimator with the smallest variance possible. What is that estimator? What is the smallest variance? (6pts)
Suppose we...
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Learning Problem
We have talked about the fact that the sample mean estimator X = 1 , X, is an unbiased estimator of the mean u for identically distributed X1, X2, ..., Xn: E(X) = p. The sample variance, on the other hand, is not an unbiased estimate of the true variance o2: for V = 12-1(X; - X), we get that E[V] = (1 - 02. Instead, the following bias-corrected sample variance estimator is...
We have n observations xi that are i. i. d. from a Normal distribution with mean-0 and unknown variance. We want to test using a Generalized Likelihood Ratio Test. Calculate the test statistic T for the GLRT. You can assume that the MLE for the variance is 2 CE Tn i=1
We have n observations that are i. i. d. from a Normal distribution with mean 0 anod unknown variance. We want to test using a Generalized Likelihood Ratio Test. Calculate the test statistic T for the GLRT. You can assume that the MLE for the variance is Tn 62 2
Problem 2 Suppose we want to estimate the concentration (ug/mL) of a specific dose of ampicillin in the urine after various periods of time. We recruit 25 volunteers who have received ampicillin and find they have a mearn concentration of 7.0ug/mL distribution of concentrations is normally distributed. We recruit 25 volunteers who have received ampicillin and find they have a mean with a standard deviation of 2.0pg/mL. Assume the underlying population 1, Find a 95% CI for the population mean...
Problem 2. Rice, Problem 7, pg. 314 (Extended)] Suppose that X1,..., Xn iid Geometric(p). a) Find the method of moments estimator for p. (b) Find the maximum likelihood estimator for p. (c) Find the asymptotic variance of the MLE (d) Suppose that p has a uniform prior distribution on the interval [0, 1]. What is the posterior distribution of p? For part (e), assume that we obtained a random sample of size 4 with L^^^xi-.4 (e) What is the posterior...