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NOTES
ELGA 1: Effective communicators
Know and be familiar with the correctnomenclature and symbols for parameters and
statistics
ELGA 2: Critical and creative thinkers
Recognize problems as applications of thevarious tests of hypothesis which have beendiscussed
Analyze and solve statistical problems andinterpret statistical results
Chapter 9
Tests of Hypothesis
ELGA 3: Technically proficient and competentprofessionals and leaders
Learn to use the calculator and the computer ingenerating statistical results
Be familiar with the use of basic software(Microsoft Excel and its add-in PHSTAT) in statisticalanalysis and decision-making;
ELGA 4: Service-driven, ethical, and sociallyresponsible citizens
Realize the significance of statistics in
business decision-making of entrepreneurs andcorporate managers and how statistics can
contribute to development
Chapter 9Tests of Hypothesis
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Chapter 9
Hypothesis Testing
Chapter Outline
Developing Null and AlternativeHypotheses
Type I and Type II Errors
One-Tailed Tests About a PopulationMean: Large-Sample Case
Two-Tailed Tests About a PopulationMean: Large-Sample Case
Tests About a Population Mean: Small-Sample Case
continued
Chapter 9
Hypothesis Testing
Tests About a Population Proportion
Hypothesis Testing and Decision Making
Calculating the Probability of Type I & IIErrors
Point Estimators
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What are Hypotheses?
Research Hypothesis a statement of what the researcher believes will
be the outcome of an experiment or a study.
Statistical Hypotheses a more formal structure derived from the research
hypothesis. A conjecture regarding one or severalpopulation parameters.
Substantive Hypotheses a statistically significant difference does not imply
or mean a material, substantive difference.
Developing Null and
Alternative Hypotheses
Definition. The null hypothesis, denoted by H0is the conjecture that is held as true unlessthere is sufficient evidence to concludeotherwise. The null hypothesis always containsan equality and hence, in terms of populationparameters, comes in the form H0: = 0 orH0: 0, or H0: 0. It is the Status Quo.Manufacturers claims are usually given thebenefit of the doubt and stated as the nullhypothesis.
Definition. The alternative hypothesisdenoted by HA is the conjecture that covers all
situations not covered by the null hypothesis.The alternative hypothesis never contains an
equality and hence, in terms of populations
parameters, comes in the form HA: 0 or HA: < 0, or HA: > 0. The burden of proof fallson the alternative hypothesis.
Developing Null andAlternative Hypotheses
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Test Statistic
Definition. The test statistic is a measure ofhow close the sample results have come to thehypothesized value of the parameter in the nullhypothesis. The test statistic follows a well-known distribution such as Z, t, binomial, etc.
Decision Rule
Definition. The decision rule is a rule thatspecifies under what conditions the nullhypothesis may be rejected.
There are two decisions that can be made in a
test of hypothesis, namely, to reject it, or not toreject (accept) it.
Example: Accepting a shipment of goods
from a supplier or returning the shipment ofgoods to the supplier.
Errors in Hypothesis Testing
Hypothesis testing is not a foolproofprocedure. Remember that statisticians basetheir decisions on sample results, andsometimes, sample results could lead them
to make incorrect decisions.
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Types of Errors
There are two types of errors that can be made when
carrying out a test of hypothesis.
A Type I error occurs when one rejects the nullhypothesis when in fact it is true. The probability of
committing a Type I error is denoted by and it iscalled the level of significance.
A Type II error occurs when one fails to reject thenull hypothesis when in fact it is false. The probability
of committing a Type II error is denoted by .
Types of Errors
Type II errorCorrect DecisionDont Reject H0
Correct DecisionType I errorReject H0
H0 FalseH0 TrueDecision
Actual Situation
Critical Region
Definition. The critical region, or rejection region,is a range of numbers such that if the value of thetest statistic falls in this range, it will lead to therejection of the null hypothesis.
The critical numbers determines the critical region.
The rejection region is designed so that, before thesampling takes place, our test statistic will have a
probability of of falling within the rejection region ifthe null hypothesis is true.
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Region of Non-Rejection
Definition. The region of non-rejection is therange of values (also determined by the criticalnumbers) that will lead us not to reject the nullhypothesis if the test statistic should fall withinthis region. The region or non-rejection isdesigned so that before the sampling takesplace, our test statistic will have a probability of
1 - of falling in this region if the nullhypothesis is true.
Example: Metro EMS Null and Alternative Hypotheses
A major west coast city provides one of themost comprehensive emergency medicalservices in the world. Operating in a multiplehospital system with approximately 20 mobilemedical units, the service goal is to respond tomedical emergencies with a mean time of 12minutes or less.
The director of medical services wants toformulate a hypothesis test that could use asample of emergency response times todetermine whether or not the service goal of12 minutes or less is being achieved.
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Example: Arnolds Diner
A soft-drink machine at Arnolds Diner is
regulated so that the amount of drink
dispensed is approximately normallydistributed with a mean of 200 ml. and astandard deviation of 15 ml. The machine is
checked periodically by taking a sample of 9
drinks and computing the mean content.Based on the sample results, a decision is to
be made whether the machine is operatingsatisfactorily, or needs corrective action.
State the null and alternative hypotheses.What kind of test is this?
Example: Coffee
A producer of a certain brand of coffee claimsthat at least 20% of all coffee drinkers preferits product to the major competing brand.
The 8-step procedure
! " #! $ #
%! & '(! ')! * + , +-! ,.! ,! /0 !
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The equality part of the hypotheses alwaysappears in the null hypothesis.
In general, a hypothesis test about the valueof a population mean must take one of thefollowing three forms (where0 is thehypothesized value of the population mean).
H0: >0 H0: >00 z/2
Two-Tailed Tests about a PopulationMean: Large-Sample Case (n> 30)
z x
n=
0/z x
n=
0/ z x
s n=0/z
x
s n=0/
=40 oz
Non Rejection Region
Rejection Region
Critical Value
Rejection Region
Critical Value
=40 oz
Non Rejection Region
Rejection Region
Critical Value
Rejection Region
Critical Value
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Example: Sewer Pipe
Suppose building specifications in a certain city require
that the average breaking strength of residential sewerpipe be more than 2,400 pounds per foot of length (thatis, per lineal foot). Each manufacturer who wants to sell
pipe in this city must demonstrate that its product meets
the specification. It is desired to decide whether the meanbreaking strength of the pipe exceeds 2,400 pounds per
lineal foot. From the point of view of the city conductingthe tests, the null hypothesis is that the manufacturers
pipe does not meet specifications unless the tests provide
convincing evidence otherwise.
Example: Sewer Pipe
1,2 $ 30 4 55 ! 0 )5 30 3 (-5 ! , 4 5!5) !
The Use of p-Values
The p-value is the probability of obtaining asample result that is at least as unlikely aswhat is observed.
The p-value can be used to make thedecision in a hypothesis test by noting that:
if the p-value is less than the level ofsignificance , the value of the test statisticis in the rejection region.
if the p-value is greater than or equal to ,the value of the test statistic is not in therejection region.
Reject H0 if the p-value < .
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P-Value for Normality Cases
In general, for a one tailed test concerning normallydistributed test statistics,
(a) if the HA contains a , the p-value is the areaP(Z > z) where z is the value of the test statistic.
(c) if the HA contains a , the p-value is 2P(Z > z )where z is the value of the test statistic.
Example: Glow Toothpaste Two-Tailed Tests about a Population Mean:Large n
The production line for Glow toothpaste isdesigned to fill tubes of toothpaste with a meanweight of 6 ounces.
Periodically, a sample of 30 tubes will beselected in order to check the filling process.Quality assurance procedures call for the
continuation of the filling process if the sampleresults are consistent with the assumption thatthe mean filling weight for the population oftoothpaste tubes is 6 ounces; otherwise thefilling process will be stopped and adjusted.
Example: Glow Toothpaste
Two-Tailed Test about a Population Mean:Large n
A hypothesis test about the population mean can
be used to help determine when the fillingprocess should continue operating and when itshould be stopped and corrected.
Assume that a sample of 30 toothpaste tubes
provides a sample mean of 6.1 ounces andstandard deviation of 0.2 ounces. Use a 0.05level of significance.
TwoTwo--Tailed Test about a Population Mean:Tailed Test about a Population Mean:
LargeLarge nn
A hypothesis test about the population mean canA hypothesis test about the population mean can
be used to help determine when the fillingbe used to help determine when the filling
process should continue operating and when itprocess should continue operating and when it
should be stopped and corrected.should be stopped and corrected.
Assume that a sample of 30 toothpaste tubesAssume that a sample of 30 toothpaste tubes
provides a sample mean of 6.1 ounces andprovides a sample mean of 6.1 ounces and
standard deviation of 0.2 ounces. Use a 0.05standard deviation of 0.2 ounces. Use a 0.05
level of significance.level of significance.
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Confidence Interval Approach to aTwo-Tailed Test about a PopulationMean Select a simple random sample from the
population and use the value of the samplemean to develop the confidence interval for
the population mean.
If the confidence interval contains the
hypothesized value0, do not reject H0.Otherwise, reject H0.
xx
Test Statistic Unknown
This test statistic has a tdistribution with n- 1 degrees offreedom.
Rejection Rule One-Tailed Two-Tailed
H0: t
H0: >0 Reject H0 if t< -t
H0: =0 Reject H0 if |t| > t/2
Tests about a Population Mean:
Small-Sample Case (n< 30)
tx
s n=
0/
tx
s n=
0/
00>>00
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Hypotheses
H0: =0Ha: 0
Test Statistic Unknown, normal population
Rejection Rule Reject H0 if |t| > t/2
Two-Tailed Tests about a PopulationMean: Small-Sample Case (n< 30)
0
/xts n
= 0/
xt
s n
==40 oz
Non Rejection Region
Rejection Region
Critical Value
Rejection Region
Critical Value
=40 oz
Non Rejection Region
Rejection Region
Critical Value
Rejection Region
Critical Value
p -Values and the tDistribution
The format of the tdistribution table providedin most statistics textbooks does not havesufficient detail to determine the exactp-
value for a hypothesis test. However, we can still use the tdistribution
table to identify a range for the p-value.
An advantage of computer softwarepackages is that the computer output will
provide the p-value for the
tdistribution.
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Example: Kelloggs
According to Dietary Goals for the United States, high
sodium intake may be related to ulcers, stomachcancer, and migraine headaches. The humanrequirement for salt is only 220 milligrams per day,which is surpassed in most single servings of ready-to-eat cereals. If a random sample of 20 similarservings of Special K has a mean sodium content of244 milligrams of sodium and a standard deviation of24.5 milligrams, does this suggest at the 0.05 level ofsignificance that the average sodium content forsingle servings of Special K is greater than 220milligrams? Assume the distribution of sodiumcontents to be normal.
!&& ( !&& (
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&&++
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-- ""**/
xz
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xz
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xz
s n
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xz
s n
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s n
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..
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%%
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!&!&
++
The equality part of the hypotheses always appears inthe null hypothesis.
In general, a hypothesis test about the value of apopulation proportion pmust take one of the followingthree forms (where p0 is the hypothesized value of thepopulation proportion).
H0: p>p0 H0: p p0 Ha: p p0
Summary of Forms for Null and AlternativeHypotheses about a Population Proportion
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Test Statistic
where:
Rejection Rule
One-Tailed Two-Tailed
H0: p< p0 Reject H0 if z > zH0: p> p0 Reject H0 if z < -zH0: p= p0 Reject H0 if |z| > z/2
Tests about a Population Proportion:Large-Sample Case (np> 5 and n(1 - p) > 5)
zp p
p
= 0
zp p
p
= 0
p p pn
= 0 01( )p p pn
= 0 01( )
00 >> 00 z/2
Two-Tailed Tests about aPopulation Proportion
0
0 0(1 )
p p
p p
n
z
= 0
0 0(1 )
p p
p p
n
z
=
=40 oz
Non Rejection Region
Rejection Region
Critical Value
Rejection Region
Critical Value
=40 oz
Non Rejection Region
Rejection Region
Critical Value
Rejection Region
Critical Value
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Example: NSC Two-Tailed Test about a Population Proportion: Large n
For a Christmas and New Years week, theNational Safety Council estimated that 500 people
would be killed and 25,000 injured on the nationsroads. The NSC claimed that 50% of the accidentswould be caused by drunk driving.
A sample of 120 accidents showed that 67 werecaused by drunk driving. Use these data to test the
NSCs claim with = 0.05.
Example: Drug Screening
$ 3 0 3 3 -56 ! 7 55 .5 ! 8
3 9 5!5) !
Relationship among ,, and n
Once two of the three values are known, theother can be computed.
For a given level of significance , increasingthe sample size nwill reduce.
For a given sample size n, decreasing willincrease, whereas increasing willdecrease b.
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End-of-Chapter Assessment
Have you achieved the Expected La Sallian
Graduate Attributes (ELGAs) for this chapter? Do you have questions or wish to clarify
something?
Can you solve similar problems confidently if
they are issued in the quiz?
End of Chapter 9
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