Learning Objectives
• Estimate a population mean from a sample mean when s is known.
• Estimate a population mean from a sample mean when s is unknown.
• Estimate a population proportion using the z statistic.• Use the chi-square distribution to estimate the
population variance given the sample variance.• Determine the sample size needed in order to
estimate the population mean and population proportion.
Estimating the Population Parameter
• A point estimate is a statistic calculated from a sample that is used to estimate a population parameter.
• Interval estimate - a range of values within which the analyst can declare, with some confidence, the population parameter lies.
Point Estimate of μ
• Point estimate
• Point estimate is also called Estimator• Varies from sample to sample
nxx
Interval Estimate of μ
• Because of variation in sample statistics, a population parameter is estimated using an Interval Estimate
• An interval estimate (confidence interval) is a range of values within which the researcher feels, with some confidence, that the population mean lies
Estimating the Population Mean
using Interval Estimate
Since sample mean can be greater or less than the mean, z can be positive or negative, and
xz
n
s
What is in Confidence Interval?
Confidence Interval to estimate is :
where = the total area under the normal curve outside the confidence interval area (expressed in decimal fraction) = the area in one end (tail) under the normal curve outside the confidence interval
Finding out z value for95% Confidence Interval
• is used to locate the Z value in constructing the confidence interval
• For a 95% confidence interval = 0.05 /2 = 0.025
• Value of z for /2 or z.025 look at the standard normal distribution table under the area
.5000 - .0250 = .4750• From Table A5 look up 0.4750, and read 1.96 as the z
value from the row and column
A 95% Confidence Interval
for Population Parameter
.4750 .4750
X
95%.025.025
Z1.96-1.96 0
= =
=- =
Significance of Level of Confidence
• What does the Level of Confidence to be 95%/ mean?
• It means that if the research analyst were to randomly select 100 samples of some size n and use the result i.e. calculated sample mean to construct a 95% confidence interval, approximately 95 of the 100 confidence intervals would contain the population mean.
• You will try out a practical example using R.
95% Confidence Intervals for μ
X
95%
XX
X
XX
X
Values of z for common Levels of Confidence
Confidence Level Z Value90% 1.64595% 1.9698% 2.3399% 2.575
Think: What happens to the length of Confidence Interval as the Confidence Level increases?
95% Confidence Intervals for μ
/21300, 160, 85, 1.96x n z s
/2 /2
46 461300 1.96 1300 1.9685 85
1300 34.01 1300 34.011265.99 1334.01
x z x zn n s s
Demonstration Problem 8.1
• A survey was taken of U.S. companies that dobusiness with firms in India. One of the questionson the survey was: Approximately how many yearshas your company been trading with firms in India?A random sample of 44 responses to this question yielded a mean of 10.455 years. Suppose the population standard deviation for this questionis 7.7 years. Using this information, construct a 90% confidence interval for the mean number of years that a company has been trading in India for the population of U.S. companies trading with firms in India.
Demonstration Problem 8.1:Solution
365.12545.891.1455.1091.1455.10
447.7645.1455.10
447.7645.1455.10
ssn
zxn
zx
645.1 confidence %90.44 ,7.7 ,455.10
znx s
Demonstration Problem 8.2
• A study is conducted in a company that employs 800 engineers. A random sample of 50 engineers reveals that the average sample age is 34.3 years. Historically, the population standard deviation of the age of the company’s engineers is approximately 8 years. Construct a 98% confidence interval to estimate the average age of all the engineers in this company.
Demonstration Problem 8.2:Solution
33.2 confidence %98.50 and ,800= ,8 ,3.34
znNx s
85.3675.31554.23.34554.23.34
180050800
50833.23.34
180050800
50833.23.34
11
ssN
nNn
zxN
nNn
zx
What is t distribution?
• A family of distributions -- a unique distribution for each value of its parameter, degrees of freedom (d.f.)
• t distribution is used instead of the z distribution for doing inferential statistics on the population mean when the population Standard Deviation is unknown and the population is normally distributed
• With the t distribution, you use the Sample Standard Deviation, s
t Distribution
A family of distributions - a unique distribution for each value of its parameter using degrees of freedom (d.f.), every sample size having a different distribution
ns
xt
t Distribution Characteristics
• t distribution – symmetric, unimodal, mean = 0, flatter in middle and have more area in their tails than the normal distribution
• t distribution approaches the normal curve as n becomes larger
• t distribution is to be used when the Population Varianceor Population Standard Deviation is unknown, regardless of the size of the sample
Robustness of t Distribution
• Most statistical techniques have one or more underlying assumptions
• If a technique is relatively insensitive to minor violations in one or more assumptions, the technique is said to be robust to that assumption.
• t statistic for estimating a population mean is relatively robust to the assumption that the population is normally distributed
Reading the t Distribution table
• t table uses the area in the tail of the distribution
• Emphasis in the t table is on , and each tail of the distribution contains /2 of the area under the curve when confidence intervals are constructed
• t values are located at the intersection of the df value and the selected /2 value
t statistic: Degrees of Freedom (df)
• For t statistic, df is n-1• Degree of Freedom refers to the number of
independent observations for a source of variation minus the number of independent parameters estimated in computing the variation
• Number of independent observations = n• One independent parameter, population
mean μ, is being estimated
Confidence Intervals for μ of aNormal Population: Unknown σ
1
1,2/1,2/
1,2/
ndfnstx
nstx
ornstx
nn
n
Table of Critical Values of t
df t0.100 t0.050 t0.025 t0.010 t0.0051 3.078 6.314 12.706 31.821 63.6562 1.886 2.920 4.303 6.965 9.9253 1.638 2.353 3.182 4.541 5.8414 1.533 2.132 2.776 3.747 4.6045 1.476 2.015 2.571 3.365 4.032
23 1.319 1.714 2.069 2.500 2.80724 1.318 1.711 2.064 2.492 2.79725 1.316 1.708 2.060 2.485 2.787
29 1.311 1.699 2.045 2.462 2.75630 1.310 1.697 2.042 2.457 2.750
40 1.303 1.684 2.021 2.423 2.70460 1.296 1.671 2.000 2.390 2.660
120 1.289 1.658 1.980 2.358 2.6171.282 1.645 1.960 2.327 2.576
t
With df = 24 and = 0.05, t = 1.711.
Demonstration Problem 8.3• The owner of a large equipment rental company wants to make
a rather quick estimate of the average number of days a piece of ditch digging equipment is rented out per person per time. The company has records of all rentals, but the amount of time required to conduct an audit of all accounts would be prohibitive. The owner decides to take a random sample of rental invoices. Fourteen different rentals of ditch diggers are selected randomly from the files, yielding the following data. She uses these data to construct a 99% confidence interval to estimate the average number of days that a ditch digger is rented and assumes that the number of days per rental is normally distributed in the population.
• Data: 3 1 3 2 5 1 2 1 4 2 1 3 1 1
Solution to Demonstration Problem 8.3
012.3
005.0299.1
2
131 ,14 ,29.1,14.2
13,005.
t
ndfn sx
18.310.104.114.204.114.2
1429.1012.314.2
1429.1012.314.2
nstx
nstx
Confidence Interval to Estimate the Population Proportion
2 2
ˆ ˆ ˆ ˆˆ ˆ
:ˆ = sample proportionˆ ˆ=1
= population proportion = sample size
p q p qp z p p zn n
wherepq ppn
Demonstration Problem 8.5
A clothing company produces men’s jeans. The jeans are made and sold with either a regular cut or a boot cut. In an effort to estimate the proportion of their men’s jeans market in Oklahoma City that prefers boot-cut jeans, the analyst takes a random sampleof 423 jeans sales from the company’s two Oklahoma City retail outlets. Only 72 of the sales were forboot-cut jeans. Construct a 90% confidence interval to estimate the proportion of the population in Oklahoma City who prefer boot-cut jeans.
Solution forDemonstration Problem 8.5
72ˆ423, 72, 0.17423
ˆ ˆ=1 1 0.17 0.8390% 1.645
xn x pn
q pConfidence z
ˆ ˆ ˆ ˆˆ ˆ
(0.17)(0.83) (0.17)(0.83)0.17 1.645 0.17 1.645423 423
0.17 0.03 0.17 0.030.14 0.20
pq pqp z p p zn n
p
pp
Estimating Population Variance
Population Parameter s
Estimator of s
formula for Single Variance2
22
( 1)
degrees of freedom 1
n s
n
s
1)( 2
2
n
xxs
Chi-square statistic to estimate Population Variance
• Extremely sensitive to the violations of the assumption that the population is normally distributed• This technique lacks robustness• Take extreme caution while constructing
confidence interval
Confidence Interval for
confidence of level 11
112
21
22
2
2
2
s
ndf
snsn
Two Table Values of χ2
0 2 4 6 8 10 12 14 16 18 20
df 0.950 0.0501 3.93219E-03 3.841462 0.102586 5.991483 0.351846 7.814724 0.710724 9.487735 1.145477 11.070486 1.63538 12.59167 2.16735 14.06718 2.73263 15.50739 3.32512 16.9190
10 3.94030 18.3070
20 10.8508 31.410421 11.5913 32.670622 12.3380 33.924523 13.0905 35.172524 13.8484 36.415025 14.6114 37.6525
df = 7
.05
df = 7
.05
.05
.95
2.16735 14.0671
Exercise in R: Confidence Intervals
Open URL: www.openintro.orgGo to Labs in R and select 4B - Confidence Levels