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CHAPTER 7
Sampling Distribution of Sample Mean
 Population distribution

μ

X
N

i



18  20  22  24
 21 σ 
4

 (X

i

 μ)2

N

 2.236

 N= Population size n= sample size
 Sample mean X 

1 n
 Xi
n i 1

 Standard Error of mean σ X 

μX  μ

 Normal distribution


σ
(standard error of the mean decreases as the sample size increases)
n
σX 

X = sample mean μ = population mean

σ
n

σ = population standard deviation
Z

Then, Z-value for the sampling distribution of X

n = sample size

(X  μ) (X  μ)

σ
σX
n

 Finite population correction----n > 5% of N
σ2 N  n
n N 1

σX 

σ
n

Nn
N 1



Then, Var( X) 



If the n is not small compared to the N , then use Z 

 Sampling distribution property---- as n increases,

(X  μ)
σ Nn
n N 1

σ x decreases

Central Limit Theorem: As n increases Sampling Distribution becomes normal. For n>25
Central Tendency μ X  μ Variation σ X 

σ
n

 the interval - zα/2 to zα/2 encloses probability 1 – α
Then

μ  z/2σ X

is the interval that includes X with probability 1 – α
Sampling Distribution of Sample Proportion:
 P= population proportion


ˆ X
ˆ
P = sample proportion P 
n

ˆ
0≤ P≤1

ˆ
P has a binomial distribution, but can be approximated by a normal distribution when

nP(1 – P) > 9


ˆ
E( P)  p



Z

 X  P(1  P)
σ 2  Var   
ˆ
P
n
n

ˆ
PP

σP
ˆ

ˆ
PP
P(1  P)
n

Chapter 8
 If P(a <  < b) = 1 - 

(1 - ) is called the confidence level

then the interval from a to b is called a 100(1 - )% confidence interval of .
 Confidence Intervals for σ2 Known: z table


Point Estimate ± (Reliability Factor)(Standard Error)

x  z α/2


σ
n

Where margin of error= ME  z α/2

σ
n

W= 2ME

 The margin of error can be reduced if


the population standard deviation can be reduced (σ↓)



The sample size is increased (n↑)



The confidence level is decreased, (1 – ) ↓

 Confidence Intervals for σ2 Unknown: t table

x μ
x =mean, s=standard deviation
s/ n



t



degrees of freedom= v= n-1



P(t n 1  t n 1,α/2 )  α/2


x  t n -1,α/2

S
S
 μ  x  t n -1,α/2
n
n

where tn-1,α/2 is the critical value

 Confidence Intervals for the Population Proportion, p:

P(1  P)
n



σP 



ˆ
p  z α/2

ˆ
ˆ
ˆ
ˆ
p(1  p)
p(1  p)
ˆ
 P  p  z α/2
n
n

Chapter 10
 Key: Outcome
(Probability)
 The power of a test is the probability of rejecting a null hypothesis that is false
 Power = P(Reject H0 | H1 is true)
 Power of the test increases as the sample size increases

If Calculated z < Critical zα = Do not reject Ho
If Calculated z > Critical zα = Reject Ho
 p-Value Approach to Testing
 Smallest value of  for
which H0 can be rejected

 For two-tail

 Tests of the Population Proportion:

σp 
ˆ

P(1  P)
n

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ECO202 formulae

  • 1. CHAPTER 7 Sampling Distribution of Sample Mean  Population distribution μ X N i  18  20  22  24  21 σ  4  (X i  μ)2 N  2.236  N= Population size n= sample size  Sample mean X  1 n  Xi n i 1  Standard Error of mean σ X  μX  μ  Normal distribution  σ (standard error of the mean decreases as the sample size increases) n σX  X = sample mean μ = population mean σ n σ = population standard deviation Z Then, Z-value for the sampling distribution of X n = sample size (X  μ) (X  μ)  σ σX n  Finite population correction----n > 5% of N σ2 N  n n N 1 σX  σ n Nn N 1  Then, Var( X)   If the n is not small compared to the N , then use Z   Sampling distribution property---- as n increases, (X  μ) σ Nn n N 1 σ x decreases Central Limit Theorem: As n increases Sampling Distribution becomes normal. For n>25 Central Tendency μ X  μ Variation σ X  σ n  the interval - zα/2 to zα/2 encloses probability 1 – α Then μ  z/2σ X is the interval that includes X with probability 1 – α
  • 2. Sampling Distribution of Sample Proportion:  P= population proportion  ˆ X ˆ P = sample proportion P  n ˆ 0≤ P≤1 ˆ P has a binomial distribution, but can be approximated by a normal distribution when nP(1 – P) > 9  ˆ E( P)  p  Z  X  P(1  P) σ 2  Var    ˆ P n n ˆ PP  σP ˆ ˆ PP P(1  P) n Chapter 8  If P(a <  < b) = 1 -  (1 - ) is called the confidence level then the interval from a to b is called a 100(1 - )% confidence interval of .  Confidence Intervals for σ2 Known: z table  Point Estimate ± (Reliability Factor)(Standard Error) x  z α/2  σ n Where margin of error= ME  z α/2 σ n W= 2ME  The margin of error can be reduced if  the population standard deviation can be reduced (σ↓)  The sample size is increased (n↑)  The confidence level is decreased, (1 – ) ↓  Confidence Intervals for σ2 Unknown: t table x μ x =mean, s=standard deviation s/ n  t  degrees of freedom= v= n-1  P(t n 1  t n 1,α/2 )  α/2
  • 3.  x  t n -1,α/2 S S  μ  x  t n -1,α/2 n n where tn-1,α/2 is the critical value  Confidence Intervals for the Population Proportion, p: P(1  P) n  σP   ˆ p  z α/2 ˆ ˆ ˆ ˆ p(1  p) p(1  p) ˆ  P  p  z α/2 n n Chapter 10  Key: Outcome (Probability)  The power of a test is the probability of rejecting a null hypothesis that is false  Power = P(Reject H0 | H1 is true)  Power of the test increases as the sample size increases If Calculated z < Critical zα = Do not reject Ho If Calculated z > Critical zα = Reject Ho
  • 4.  p-Value Approach to Testing  Smallest value of  for which H0 can be rejected  For two-tail  Tests of the Population Proportion: σp  ˆ P(1  P) n