
下載億題庫APP
聯(lián)系電話:400-660-1360

請謹(jǐn)慎保管和記憶你的密碼,以免泄露和丟失

請謹(jǐn)慎保管和記憶你的密碼,以免泄露和丟失
Distribution of the Sample Mean
The Central Limit Theorem.
Given a population described by any probability distribution having mean μ and finite variance σ2, the sampling distribution of the sample meanX ?computed from samples of size n from this population will be approximately normal with meanμ (the population mean) and variance σ2/n (the population variance divided by n) when the sample size n is large.
微信截圖_1596693685807520200806140615182.png)
[Practice Problems] A population has a non-normal distribution with mean μ and variance σ2. The sampling distribution of the sample mean computed from samples of large size from that population will have:
A. the same distribution as the population distribution.
B. its mean approximately equal to the population mean.
C. its variance approximately equal to the population variance.
[Solutions] B
Given a population described by any probability distribution (normal or non-normal) with finite variance, the central limit theorem states that the sampling distribution of the sample mean will be approximately normal, with the mean approximately equal to the population mean, when the sample size is large.
191Distribution of the Sample Mean:[Practicewhen the sample size is large.
309Selection of Sample Size:All else equal:[Practice,B.C.ThereforeThe confidence interval is 116.23±1.746=13.271.
271Point and Interval Estimates of the Population Mean:Mean,examples of estimation formulas or estimators.:distribution.:Efficiency.[PracticeC.

微信掃碼關(guān)注公眾號
獲取更多考試熱門資料