simultaneous estimation of the mean and variance

2.1 Simultaneous Estimation of the Mean and Variance

2.1.1 Confidence interval

A $100(1-alpha)%$ confidence interval for a parameter $theta$ is a random interval $[L_1, L_2]$ :

Confidence interval on $mu$ when $sigma^2 $ is known:

Joint Sampling of Mean and Variance:

Let $X_{1}, ldots, X_{n}, n geq 2​$, be a random sample of size n from a normal distribution with mean $mu​$ and variance $sigma^{2}​$ . Then:

Furthermore, if in a given situation we assume that X and S2 are independently distributed we are essentially assuming that the population is normally distributed.

Interval Estimation of Variability:

A $100(1-alpha)%$ confidence interval on $sigma^2$ is given by:

2.1.2 The Student T distribution

Let Z be a standard normal variable and let $chi^2$ be an independent chi-squared random variable with $gamma$ degrees of freedom. The random variable

is said to follow a T distribution with $gamma$ degrees of freedom.

The density:

Theorem:

Let $X_{1}, X_{2},$ … , $X_{n}$ be a random sample from a normal distribution with $mu$ and $sigma$. Then the random variable:

follows a T distribution with n-1 degrees of freedom.

A $100(1-alpha)%$ confidence interval on $sigma^2$ is given by:

2.1.3 Tolerance Limits

Two sided tolerance limits

Let $X$ be a normally distributed random variable and $overline{X}$ and $S^2$ be the mean and variance obtained from a sample of size n. Then there exist $K=K(n, alpha, delta)$ such that the interval

covers $($ at least ) $ delta cdot 100 %$ of the population with $(1-alpha) cdot 100 %$ confidence.

One sided tolerance limits

there exist numbers $K=K(n, alpha, delta)$ such that the intervals

covers $($ at least ) $ delta cdot 100 %$ of the population with $(1-alpha) cdot 100 %$ confidence.

Non-Parametric Tolerance Limits

where $n approx dfrac{1}{2}+dfrac{1+delta}{1-delta} cdot dfrac{chi_{alpha, 4}^{2}}{4}$