Chapter 8 Interval Estimation

Section 8.1 Population Mean: σ Known

Margin of Error and the Interval Estimate

-- A point estimator cannot be expected to provide theexact value of the population parameter.

-- An interval estimate can be computed by adding andsubtracting a margin of error to the point estimate.

Point Estimate +/- Margin of Error

-- The purpose of an interval estimate is to provideinformation about how close the point estimate is to

the value of the parameter.

-- The general form of an interval estimate of apopulation mean is:

+/- Margin of Error

Interval Estimation of a Population Mean: σ known

-- In order to develop an interval estimate of a population mean, the margin of error must be computed using either:

•the population standard deviation σ , or

•the sample standard deviation s

--σis rarely known exactly, but often a good estimate can be obtained based on historical data or other information.

-- We refer to such cases as the σknown case.

There is a 1 -  probability that the value of a sample mean will be within a margin of error of +/--

of the population mean

1 -  is called the confidence coefficient  placed at a level that defines the probability that sample mean will be within a certain margin of error of the population mean (common values are 90%, 95% and 99%)

Interval Estimate of μ

=sample mean

1 -  = confidence coefficient

z/2 = z value providing an area of/2 in the upper tail of the standard normal probability distribution

σ = population standard deviation

n = sample size

Adequate Sample Size

-- In most applications, a sample size of n = 30 isadequate. (Central Limit Theorem)

-- If the population distribution is highly skewed orcontains outliers, a sample size of 50 or more isrecommended.

-- If the population is not normally distributed but isroughly symmetric, a sample size as small as 15 will suffice.

-- If the population is believed to be at leastapproximately normal, a sample size of less than 15can be used.

Example: Discount Sounds

Discount Sounds has 260 retail outlets throughout the United States. The firmis evaluating a potential location for a

new outlet, based in part, on the meanannual income of the individuals inthe marketing area of the new location.

A sample of size n = 36 was taken;the sample mean income is $31,100. Thepopulation is not believed to be highly skewed. The

population standard deviation is estimated to be $4,500,and the confidence coefficient to be used in the interval estimate is .95.

Using the Standard Normal Table  95% of the sample means observed are within +/- 1.96 standard deviations from the population mean or within +/- 1.96of μ

Margin of Error is:

Interval estimate of μ is:

Confidence levels of 90% and 99% are also common. A list of the z/2values for those common confidence levels are shown below:

Confidence Level/2z/2

90%.10.051.645

95%.05 .025 1.96

99% .01 .005 2.576

Section 8.2 Population Mean: σ Unknown

-- If an estimate of the population standard deviation cannot be developed prior to sampling, we use the sample standard deviation s to estimate σ .

-- In this case, the interval estimate for μ is based on the t distribution.

-- The t distribution is a family of similar probability distributions with a specific t distribution depending on a parameter known as the degrees of freedom.

-- Degrees of freedom refer to the number of independent pieces of information that go into thecomputation of s.

t distribution

-- A tdistribution with more degrees of freedom hasless dispersion.

-- As the number of degrees of freedom increases, thedifference between the tdistribution and thestandard normal probability distribution becomessmaller and smaller.

-- For more than 100 degrees of freedom, the standardnormal z value provides a good approximation tothe t value.

-- The standard normal z values can be found in theinfinite degrees (  ) row of the t distribution table (starting p. 920 text)

Interval Estimation of a Population Mean: σ Unknown

Interval Estimate

where: 1 - = the confidence coefficient

t/2 = the t value providing an area of /2in the upper tail of a t distributionwith n - 1 degrees of freedom

s = the sample standard deviation

Example: Apartment Rents

A reporter for a student newspaper is writing anarticle on the cost of off-campushousing. A sample of 16efficiency apartments within ahalf-mile of campus resulted ina sample mean of $650 per month and a samplestandard deviation of $55.

Let us provide a 95% confidence interval estimate of the mean rent permonth for the population of efficiency apartments within a

half-mile of campus. We willassume this population to be normally distributed.

Section 8.3 Determining The Sample Size

-- how to choose a sample size large enough to provide a desired margin of error

Let E = desired margin of error

E is the amount added to and subtracted from the point estimate to obtain an interval estimate

Margin of Error

Necessary Sample Size

Example:

Recall that Discount Sounds is evaluating a potential location for a new retail outlet, based in part, on the mean annual income of the individuals inthe marketing area of the new location.

Suppose that Discount Sounds’ management teamwants an estimate of the population mean such thatthere is a .95 probability that the sampling error is $500or less.How large a sample size is

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