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Statistical Inference
Making decisions regarding the population base on a sample
Decision Types
• Estimation
– Deciding on the value of an unknown parameter
• Hypothesis Testing
– Deciding a statement regarding an unknown parameter is true of false
• All decisions will be based on the values of statistics
Estimation
• Definitions
– An estimator of an unknown parameter is a sample statistic used for this purpose
– An estimate is the value of the estimator after the data is collected
• The performance of an estimator is assessed by determining its sampling distribution and measuring its closeness to the parameter being estimated
Examples of Estimators
The Sample Proportion
Let p = population proportion of interest or binomial probability of success.
Let
trialsbimomial of no.
succeses of no.ˆ
n
Xp
p̂ ofon distributi sampling Then the
pp ˆmean
n
ppp
)1(ˆ
is a normal distribution with
= sample proportion or proportion of successes.
p̂ ofon distributi Sampling
0
5
10
15
20
25
30
0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1
c
pp ˆ
The Sample Mean
Let x1, x2, x3, …, xn denote a sample of size n from a normal distribution with mean and standard deviation .Let
mean sample1
n
xx
n
ii
x ofon distributi sampling Then the
xmean
nx
is a normal distribution with
0
0.05
0.1
0.15
0.2
0.25
0.3
80 90 100 110 120
population
n = 5
n = 10
n = 15
n = 20c
x
x ofon distributi Sampling
Confidence Intervals
Estimation by Confidence Intervals• Definition
– An (100) P% confidence interval of an unknown parameter is a pair of sample statistics (t1 and t2) having the following properties:
1. P[t1 < t2] = 1. That is t1 is always smaller than t2.
2. P[the unknown parameter lies between t1 and t2] = P.
• the statistics t1 and t2 are random variables
• Property 2. states that the probability that the unknown parameter is bounded by the two statistics t1 and t2 is P.
Critical values for a distribution• The upper critical value for a any distribution
is the point x underneath the distribution such that P[X > x] =
x
Critical values for the standard Normal distribution
P[Z > z] =
z
Critical values for the standard Normal distribution
P[Z > z] =
Confidence Intervals for a proportion p
Then t1 to t2 is a (1 – )100% = P100% confidence interval for p
n
ppzpzpt p
1ˆˆ 2/ˆ2/1
n
ppzp
ˆ1ˆˆ 2/
and
n
ppzpzpt p
1ˆˆ 2/ˆ2/2
n
ppzp
ˆ1ˆˆ 2/
Let
Logic:
Thus t1 to t2 is a (1 – )100% = P100% confidence interval for p
p
ppz
ˆ
ˆ
has a Standard Normal distribution
and
1
ˆ2/
ˆ2/ z
ppzP
p
PzzzP 1Then
Hence 1ˆˆ ˆ2/ˆ2/ pp zppzpP
121 tptP
ˆ ˆ/ 2 / 2ˆ 1p pP z p p z
ˆ ˆ/ 2 / 2ˆ 1p pP z p p z
Example• Suppose we are interested in determining the success rate
of a new drug for reducing Blood Pressure
• The new drug is given to n = 70 patients with abnormally high Blood Pressure
• Of these patients to X = 63 were able to reduce the abnormally high level of Blood Pressure
900.070
63ˆ
n
Xp
• The proportion of patients able to reduce the abnormally high level of Blood Pressure was
Then
Thus a 95% confidence interval for p is 0.8297 to 0.9703
n
ppzpt
ˆ1ˆˆ 2/1
and
If P = 1 – = 0.95 then /2 = .025 and z = 1.960
70
10.090.0)960.1()90.0(
8297.00703.)90.0(
n
ppzpt
ˆ1ˆˆ 2/2
70
10.090.0)960.1()90.0(
9703.00703.)90.0(
100P% Confidence Interval for the population proportion:
Confidence Interval for a Proportion
pzp ˆ2/ˆ
n
pp
n
ppp
ˆ1ˆ1ˆ
Interpretation: For about 100P% of all randomly selected samples from the population, the confidence interval computed in this manner captures the population proportion.
point critical 2/upper 2/ z
ndistribtio normal standard theof
Error Bound
For a (1 – )% confidence level, the approximate margin of error in a sample proportion is
ˆ ˆ1Error Bound
p pz
n
Factors that Determine the Error Bound
1. The sample size, n. When sample size increases, margin of error decreases.
p̂2. The sample proportion, . If the proportion is close to either 1 or 0 most individuals have the same trait or opinion, so there is little natural variability and the margin of error is smaller than if the proportion is near 0.5.
3. The “multiplier” z/2. Connected to the “(1 – a)%” level of confindence of the Error Bound. The value of z/2 for a 95% level of
confidence is 1.96 This value is changed to change the level of confidence.
Determination of Sample Size
In almost all research situations the researcher is interested in the question:
How large should the sample be?
Answer:
Depends on:
• How accurate you want the answer.
Accuracy is specified by:
• Specifying the magnitude of the error bound
• Level of confidence
Error Bound:
• If we have specified the level of confidence then the value of za/2 will be known.
• If we have specified the magnitude of B, it will also be known
n
ppz
n
ppzB aa
ˆ1ˆ12/2/
Solving for n we get:
2
22/
2
22/ *1*1
B
ppz
B
ppzn aa
Summarizing:
The sample size that will estimate p with an Error Bound B and level of confidence P = 1 – is:
where:• B is the desired Error Bound• z is the /2 critical value for the standard normal
distribution• p* is some preliminary estimate of p.If you do not have a preliminary estimate of p, use p* = 0.50
2
22/ *1*
B
ppzn a
Reason
For p* = 0.50 2
22/ *1*
B
ppzn a
0
500
1000
1500
2000
2500
3000
0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1
n
*p
n will take on the largest value.
Thus using p* = 0.50, n may be larger than required if p is not 0.50. but will give the desired accuracy or better for all values of p.
Example• Suppose that I want to conduct a survey and want to estimate
p = proportion of voters who favour a downtown location for a casino:
I know that the approximate value of p is• p* = 0.50. This is also a good choice for p if one has no
preliminary estimate of its value.• I want the survey to estimate p with an error bound B = 0.01
(1 percentage point)• I want the level of confidence to be 95% (i.e. = 0.05 and
z = z = 1.960Then
9604
01.0
50.050.0960.12
2
n
Confidence Intervals for the mean of a Normal Population,
Then t1 to t2 is a (1 – )100% = P100% confidence interval for
nzxzxt x
2/2/1 Let
andn
zxzxt x
2/2/2
Logic:
Thus t1 to t2 is a (1 – )100% = P100% confidence interval for p
x
xz
has a Standard Normal distribution
and
12/2/ z
xzP
x
PzzzP 1Then
Hence 12/2/ xx zxzxP
121 ttP
Example• Suppose we are interested average Bone Mass Density
(BMD) for women aged 70-75
• A sample n = 100 women aged 70-75 are selected and BMD is measured for eahc individual in the sample.
• The average BMD for these individuals is:
63.25x• The standard deviation (s) of BMD for these individuals
is: 82.7s
Then
Thus a 95% confidence interval for is 24.10 to 27.16
n
szx
nzxt 2/2/1
and
If P = 1 – = 0.95 then /2 = .025 and z = 1.960
10.2453.163.25100
82.7960.163.25
n
szx
nzxt 2/2/2
16.2753.163.25100
82.7960.163.25
Determination of Sample Size
Again a question to be asked:
How large should the sample be?
Answer:
Depends on:
• How accurate you want the answer.
Accuracy is specified by:
• Specifying the magnitude of the error bound
• Level of confidence
Error Bound:
• If we have specified the level of confidence then the value of z/2 will be known.
• If we have specified the magnitude of B, it will also be known
nzB a
2/
Solving for n we get:
2
222/
2
222/ *
B
sz
B
zn aa
Summarizing:
The sample size that will estimate with an Error Bound B and level of confidence P = 1 – is:
where:• B is the desired Error Bound• z is the /2 critical value for the standard normal
distribution• s* is some preliminary estimate of s.
2
222/
2
222/ *
B
sz
B
zn aa
Notes:
• n increases as B, the desired Error Bound, decreases– Larger sample size required for higher level of
accuracy• n increases as the level of confidence, (1 – ), increases
– z increases as /2 becomes closer to zero.– Larger sample size required for higher level of
confidence• n increases as the standard deviation, , of the population
increases.– If the population is more variable then a larger sample
size required
2
222/
2
222/ *
B
sz
B
zn aa
Summary:
The sample size n depends on: • Desired level of accuracy• Desired level of confidence• Variability of the population
Example• Suppose that one is interested in estimating the average
number of grams of fat (m) in one kilogram of lean beef hamburger :
This will be estimated by:• randomly selecting one kilogram samples, then • Measuring the fat content for each sample.• Preliminary estimates of and indicate:
– that and are approximately 220 and 40 respectively.
• I want the study to estimate with an error bound 5 and • a level of confidence to be 95% (i.e. = 0.05 and z =
z = 1.960)
Solution
2469.2455
40960.12
22
n
Hence n = 246 one kilogram samples are required to estimate within B = 5 gms with a 95% level of confidence.
Confidence Intervals
Confidence Interval for a Proportion
pzp ˆ2/ˆ
n
pp
n
ppp
ˆ1ˆ1ˆ
point critical 2/upper 2/ z
ndistribtio normal standard theof
ˆ ˆ ˆ/ 2 / 2 / 2
ˆ ˆ1 1p p p
p p p pB z z z
n n
Error Bound
The sample size that will estimate p with an Error Bound B and level of confidence P = 1 – is:
where:• B is the desired Error Bound• z is the /2 critical value for the standard normal
distribution• p* is some preliminary estimate of p.
2
22/ *1*
B
ppzn a
Determination of Sample Size
Confidence Intervals for the mean of a Normal Population,
/ 2 xx z
/ 2or x zn
/ 2or s
x zn
sample meanx point critical 2/upper 2/ z
ndistribtio normal standard theof sample standard deviation s
The sample size that will estimate with an Error Bound B and level of confidence P = 1 – is:
where:• B is the desired Error Bound• z is the /2 critical value for the standard normal
distribution• s* is some preliminary estimate of s.
2
222/
2
222/ *
B
sz
B
zn aa
Determination of Sample Size
Hypothesis Testing
An important area of statistical inference
Definition
Hypothesis (H)– Statement about the parameters of the population
• In hypothesis testing there are two hypotheses of interest.– The null hypothesis (H0)
– The alternative hypothesis (HA)
Either
– null hypothesis (H0) is true or
– the alternative hypothesis (HA) is true.
But not both
We say that are mutually exclusive and exhaustive.
One has to make a decision – to either to accept null hypothesis
(equivalent to rejecting HA)
or– to reject null hypothesis (equivalent to
accepting HA)
There are two possible errors that can be made.
1. Rejecting the null hypothesis when it is true. (type I error)
2. accepting the null hypothesis when it is false (type II error)
An analogy – a jury trial
The two possible decisions are
– Declare the accused innocent.
– Declare the accused guilty.
The null hypothesis (H0) – the accused is innocent
The alternative hypothesis (HA) – the accused is guilty
The two possible errors that can be made:
– Declaring an innocent person guilty.(type I error)
– Declaring a guilty person innocent.(type II error)
Note: in this case one type of error may be considered more serious
Decision Table showing types of Error
H0 is True H0 is False
Correct Decision
Correct Decision
Type I Error
Type II Error
Accept H0
Reject H0
To define a statistical Test we
1. Choose a statistic (called the test statistic)
2. Divide the range of possible values for the test statistic into two parts
• The Acceptance Region
• The Critical Region
To perform a statistical Test we
1. Collect the data.
2. Compute the value of the test statistic.
3. Make the Decision:
• If the value of the test statistic is in the Acceptance Region we decide to accept H0 .
• If the value of the test statistic is in the Critical Region we decide to reject H0 .
Example
We are interested in determining if a coin is fair.
i.e. H0 : p = probability of tossing a head = ½.
To test this we will toss the coin n = 10 times.
The test statistic is x = the number of heads.
This statistic will have a binomial distribution with p = ½ and n = 10 if the null hypothesis is true.
0
0.05
0.1
0.15
0.2
0.25
0.3
0 1 2 3 4 5 6 7 8 9 10
Sampling distribution of x when H0 is true
Note
We would expect the test statistic x to be around 5 if H0 : p = ½ is true.
Acceptance Region = {3, 4, 5, 6, 7}.
Critical Region = {0, 1, 2, 8, 9, 10}.
The reason for the choice of the Acceptance region:
Contains the values that we would expect for x if the null hypothesis is true.
Definitions: For any statistical testing procedure define
1 = P[Rejecting the null hypothesis when it is true] = P[ type I error]
= P[accepting the null hypothesis when it is false] = P[ type II error]
In the last example
1 = P[ type I error] = p(0) + p(1) + p(2) + p(8) + p(9) + p(10) = 0.109, where p(x) are binomial probabilities with p = ½ and n = 10 .
= P[ type II error] = p(3) + p(4) + p(5) + p(6) + p(7), where p(x) are binomial probabilities with p (not equal to ½) and n = 10. Note: these will depend on the value of p.
Table: Probability of a Type II error, vs. p
p 0.1 0.0700.2 0.3220.3 0.6160.4 0.8200.6 0.8200.7 0.6160.8 0.3220.9 0.070
Note: the magnitude of increases as p gets closer to ½.
Comments: 1. You can control = P[ type I error] and = P[
type II error] by widening or narrowing the acceptance region. .
2. Widening the acceptance region decreases = P[ type I error] but increases = P[ type II error].
3. Narrowing the acceptance region increases = P[ type I error] but decreases = P[ type II error].
Example – Widening the Acceptance Region
1. Suppose the Acceptance Region includes in addition to its previous values 2 and 8 then = P[ type I error] = p(0) + p(1) + p(9) + p(10) = 0.021, where again p(x) are binomial probabilities with p = ½ and n = 10 .
= P[ type II error] = p(2) + p(3) + p(4) + p(5) + p(6) + p(7) + p(8). Tabled values of are given on the next page.
Table: Probability of a Type II error, vs. p
p 0.1 0.2640.2 0.6240.3 0.8510.4 0.9520.6 0.9520.7 0.8510.8 0.6240.9 0.264
Note: Compare these values with the previous definition of the Acceptance Region. They have increased,
Example – Narrowing the Acceptance Region
1. Suppose the original Acceptance Region excludes the values 3 and 7. That is the Acceptance Region is {4,5,6}. Then = P[ type I error] = p(0) + p(1) + p(2) + p(3) + p(7) + p(8) +p(9) + p(10) = 0.344.
= P[ type II error] = p(4) + p(5) + p(6) . Tabled values of are given on the next page.
Table: Probability of a Type II error, vs. p
p 0.1 0.0130.2 0.1200.3 0.3400.4 0.5630.6 0.5630.7 0.3400.8 0.1200.9 0.013
Note: Compare these values with the otiginal definition of the Acceptance Region. They have decreased,
p 0.1 0.0130.2 0.1200.3 0.3400.4 0.5630.6 0.5630.7 0.3400.8 0.1200.9 0.013
p 0.1 0.2640.2 0.6240.3 0.8510.4 0.9520.6 0.9520.7 0.8510.8 0.6240.9 0.264
p 0.1 0.0700.2 0.3220.3 0.6160.4 0.8200.6 0.8200.7 0.6160.8 0.3220.9 0.070
Acceptance Region
{4,5,6}.
Acceptance Region
{3,4,5,6,7}.
Acceptance Region
{2,3,4,5,6,7,8}.
= 0.344 = 0.109 = 0.021
The Approach in Statistical Testing is:
• Set up the Acceptance Region so that is close to some predetermine value (the usual values are 0.05 or 0.01)
• The predetermine value of (0.05 or 0.01) is called the significance level of the test.
• The significance level of the test is = P[test makes a type I error]
The z-test for Proportions
Testing the probability of success in a binomial experiment
Situation
• A success-failure experiment has been repeated n times
• The probability of success p is unknown. We want to test – H0: p = p0 (some specified value of p)
Against
– HA:0pp
The Data
• The success-failure experiment has been repeated n times
• The number of successes x is observed.
• Obviously if this proportion is close to p0 the Null Hypothesis should be accepted otherwise the null Hypothesis should be rejected.
successes ofpoportion theˆ n
xp
The Test Statistic• To decide to accept or reject the Null Hypothesis
(H0) we will use the test statistic
n
pp
ppppz
p 00
0
ˆ
0
1
ˆ
ˆ
• If H0 is true we should expect the test statistic z to be close to zero.
• If H0 is true we should expect the test statistic z to have a standard normal distribution.
• If HA is true we should expect the test statistic z to be different from zero.
The sampling distribution of z when H0 is true:
The Standard Normal distribution
0 z
Accept H0Reject H0 Reject H0
The Acceptance region:
1 when trueAccept 2/2/0 zzzPHP
/2
0 z
/2
2/z 2/z
Accept H0
Reject H0 Reject H0
2/2/0 or when trueReject zzzzPHP
• Acceptance Region– Accept H0 if:
• Critical Region– Reject H0 if:
2/2/ zzz
2/2/ or zzzz
when trueReject Error I Type 0HPP
• With this Choice
2/2/ or zzzzP
Summary
To Test for a binomial probability p
H0: p = p0 (some specified value of p)Against
HA:
we
0pp
1. Decide on = P[Type I Error] = the significance level of the test (usual choices 0.05 or 0.01)
2. Collect the data
3. Compute the test statistic
n
pp
ppppz
p 00
0
ˆ
0
1
ˆ
ˆ
4. Make the Decision• Accept H0 if:
• Reject H0 if:
2/2/ zzz
2/2/ or zzzz
Example
• In the last election the proportion of the voters who voted for the Liberal party was 0.08 (8 %)
• The party is interested in determining if that percentage has changed
• A sample of n = 800 voters are surveyed
We want to test
– H0: p = 0.08 (8%)
Against
– HA: %)8( 08.0p
Summary
1. Decide on = P[Type I Error] = the significance level of the test
Choose ( = 0.05)
2. Collect the data
• The number in the sample that support the liberal party is x = 92
(11.5%) 115.0800
92ˆ
n
xp
3. Compute the test statistic
n
pp
ppppz
p 00
0
ˆ
0
1
ˆ
ˆ
4. Make the Decision• Accept H0 if:
• Reject H0 if:
960.1960.1 z
960.1or 960.1 zz
649.3
80080.0180.0
80.0115.0
960.1025.02/ zz
Since the test statistic is in the Critical region we decide to Reject H0
Conclude that H0: p = 0.08 (8%) is false
There is a significant difference ( = 5%) in the proportion of the voters supporting the liberal party in this election than in the last election
The one tailed z-test
• A success-failure experiment has been repeated n times
• The probability of success p is unknown. We want to test – H0: (some specified value of p)Against– HA:
• The alternative hypothesis is in this case called a one-sided alternative
0pp
0pp
The Test Statistic• To decide to accept or reject the Null Hypothesis
(H0) we will use the test statistic
n
pp
ppppz
p 00
0
ˆ
0
1
ˆ
ˆ
• If H0 is true we should expect the test statistic z to be close to zero or negative
• If p = p0 we should expect the test statistic z to have a standard normal distribution.
• If HA is true we should expect the test statistic z to be a positive number.
The sampling distribution of z when p = p0 :
The Standard Normal distribution
0 z
Accept H0Reject H0
The Acceptance and Critical region:
1 when trueAccept 0 zzPHP
0 zz
Accept H0
Reject H0
zzPHP when trueReject 0
• Acceptance Region– Accept H0 if:
• Critical Region– Reject H0 if:
zz
zz
when trueReject Error I Type 0HPP
• The Critical Region is called one-tailed
• With this Choice
zzP
Example• A new surgical procedure is developed for
correcting heart defects infants before the age of one month.
• Previously the procedure was used on infants that were older than one month and the success rate was 91%
• A study is conducted to determine if the success rate of the new procedure is greater than 91% (n = 200)
We want to test
– H0:
Against
– HA: %)91( 91.0p
%)91( 91.0p
procedure new theof rate success thep
Summary
1. Decide on = P[Type I Error] = the significance level of the test
Choose ( = 0.05)
2. Collect the data
• The number of successful operations in the sample of 200 cases is x = 187
(93.5%) 935.0200
187ˆ
n
xp
3. Compute the test statistic
n
pp
ppppz
p 00
0
ˆ
0
1
ˆ
ˆ
4. Make the Decision• Accept H0 if:
• Reject H0 if:
645.1z
645.1z
235.1
20091.0191.0
91.0935.0
645.105.0 zz
Since the test statistic is in the Acceptance region we decide to Accept H0
There is a no significant ( = 5%) increase in the success rate of the new procedure over the older procedure
Conclude that H0: is true%)91( 91.0p
Comments
• When the decision is made to accept H0 is made it should not be conclude that we have proven H0.
• This is because when setting up the test we have not controlled = P[type II error] = P[accepting H0 when H0 is FALSE]
• Whenever H0 is accepted there is a possibility that a type II error has been made.
In the last example
The conclusion that there is a no significant ( = 5%) increase in the success rate of the new procedure over the older procedure should be interpreted:
We have been unable to proof that the new procedure is better than the old procedure
An analogy – a jury trial
The two possible decisions are
– Declare the accused innocent.
– Declare the accused guilty.
The null hypothesis (H0) – the accused is innocent
The alternative hypothesis (HA) – the accused is guilty
The two possible errors that can be made:
– Declaring an innocent person guilty.(type I error)
– Declaring a guilty person innocent.(type II error)
Note: in this case one type of error may be considered more serious
Requiring all 12 jurors to support a guilty verdict :
– Ensures that the probability of a type I error (Declaring an innocent person guilty) is small.
– However the probability of a type II error (Declaring an guilty person innocent) could be large.
Hence: When decision of innocence is made:
– It is not concluded that innocence has been proven
but that
– we have been unable to disprove innocence
The z-test for the Mean of a Normal Population
We want to test, , denote the mean of a normal population
Situation
• A success-failure experiment has been repeated n times
• The probability of success p is unknown. We want to test – H0: p = p0 (some specified value of p)
Against
– HA:0pp
The Data
• Let x1, x2, x3 , … , xn denote a sample from a normal population with mean and standard deviation .
• Let
• we want to test if the mean, , is equal to some given value 0.
• Obviously if the sample mean is close to 0 the Null Hypothesis should be accepted otherwise the null Hypothesis should be rejected.
mean sample the1
n
xx
n
ii
The Test Statistic• To decide to accept or reject the Null Hypothesis
(H0) we will use the test statistic
s
xn
xn
n
xxz
x
0000
• If H0 is true we should expect the test statistic z to be close to zero.
• If H0 is true we should expect the test statistic z to have a standard normal distribution.
• If HA is true we should expect the test statistic z to be different from zero.
The sampling distribution of z when H0 is true:
The Standard Normal distribution
0 z
Accept H0Reject H0 Reject H0
The Acceptance region:
1 when trueAccept 2/2/0 zzzPHP
/2
0 z
/2
2/z 2/z
Accept H0
Reject H0 Reject H0
2/2/0 or when trueReject zzzzPHP
• Acceptance Region– Accept H0 if:
• Critical Region– Reject H0 if:
2/2/ zzz
2/2/ or zzzz
when trueReject Error I Type 0HPP
• With this Choice
2/2/ or zzzzP
Summary
To Test for a binomial probability p
H0: = 0 (some specified value of p)
Against
HA: 0
1. Decide on = P[Type I Error] = the significance level of the test (usual choices 0.05 or 0.01)
2. Collect the data
3. Compute the test statistic
4. Make the Decision• Accept H0 if:
• Reject H0 if:
2/2/ zzz
2/2/ or zzzz
s
xn
xnz 00
Example
A manufacturer Glucosamine capsules claims that each capsule contains on the average:
• 500 mg of glucosamine
To test this claim n = 40 capsules were selected and amount of glucosamine (X) measured in each capsule.
Summary statistics:
496.3 and 8.5x s
We want to test:
Manufacturers claim is correct
against
0 :H
:AH Manufacturers claim is not correct
The Test Statistic
s
xn
xn
n
xxz
x
0000
496.3 500 40
8.52.75
The Critical Region and Acceptance Region
Using = 0.05
We accept H0 if-1.960 ≤ z ≤ 1.960
z/2 = z0.025 = 1.960
reject H0 ifz < -1.960 or z > 1.960
The Decision
Sincez= -2.75 < -1.960
We reject H0
Conclude: the manufacturers’s claim is incorrect: