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Statistics One
Lecture 9
The Central Limit Theorem
1
Two segments
•  Sampling distributions
•  Central limit theorem

2
Lecture 9 ~ Segment 1
Sampling distributions

3
Review of histograms
•  Histograms are used to display distributions
•  For example, the body temperature of a
random sample of healthy people

4
Review of histograms

5
Review of histograms

6
Review of histograms

7
Review of histograms
•  If a distribution is perfectly normal then the
properties of the distribution are known

8
The normal distribution

9
The normal distribution & probability
•  This allows for predictions about the
distribution
–  Predictions aren’t certain
–  They are probabilistic

10
The normal distribution & probability
•  If one person is randomly selected from the
sample, what is the probability that his or
her body temperature is less than Z = 0?
–  Easy, p = .50

11
The normal distribution & probability
•  If one person is randomly selected from the
sample, what is the probability that his or
her body temperature is greater than Z = 2?
(100 F°, 38 C°)?
–  p = .02

12
The normal distribution & probability
•  If this sample is healthy, then no one should
have a fever
•  I detected a person with a fever
•  Therefore, this sample is not 100% healthy

13
Sampling distribution
•  A distribution of sample statistics, obtained
from multiple samples
–  For example,
•  Distribution of sample means
•  Distribution of sample correlations
•  Distribution of sample regression coefficients

14
Sampling distribution
•  It is hypothetical
–  Assume a mean is calculated from a sample,
obtained randomly from the population
–  Assume a certain sample size, N
–  Now, assume we had multiple random samples,
all of size N, and therefore many sample means
–  Collectively, they form a sampling distribution
15
Sampling distribution & probability
•  If one sample is obtained from a normal
healthy population, what is the probability
that the sample mean is less than Z = 0?
–  Easy, p = .50

16
Sampling distribution & probability
•  If one sample is obtained from a normal
healthy population, what is the probability
that the sample mean is greater than Z = 2
(100 F°, 38 C°)?
–  p = .02

17
Sampling distribution & probability
•  If this population is healthy, then no one
sample should have a high mean body
temperature
•  I obtained a very high sample mean
•  Therefore, the population is not healthy
18
Sampling distribution
•  A distribution of sample statistics, obtained
from multiple samples, each of size N
–  Distribution of sample means
–  Distribution of sample correlations
–  Distribution of sample regression coefficients

19
END SEGMENT

20
Lecture 9 ~ Segment 2
The Central Limit Theorem

21
Central Limit Theorem
•  Three principles
–  The mean of a sampling distribution is the same as the mean of
the population
–  The standard deviation of the sampling distribution is the
square root of the variance of sampling distribution σ2 = σ2 /N
–  The shape of a sampling distribution is approximately normal if
either (a) N >= 30 or (b) the shape of the population
distribution is normal

22
NHST & Central limit theorem
•  Multiple regression
– 
– 
– 
– 

Assume the null hypothesis is true
Conduct a study
Calculate B, SE, and t
t = B/SE

23
NHST & Central limit theorem
•  Multiple regression
–  If the null hypothesis is true (B=0), then no one sample should
have a very low or very high B
–  I obtained a very high B
–  Therefore, Reject the null hypothesis

24
The normal distribution

25
The family of t distributions

26
NHST & Central limit theorem
•  Multiple regression
– 
– 
– 
– 
– 

Assume the null hypothesis is true
Conduct a study
Calculate B, SE, and t
t = B/SE
p-value is a function of t and sample size

27
NHST & the central limit theorem
•  Multiple regression
–  If the null hypothesis is true (B=0), then no one sample should
have a very low or very high B
–  I obtained a very high B
–  Therefore, Reject the null hypothesis
–  Very high and very low is p < .05

28
NHST & the central limit theorem
•  Remember that sampling error, and therefore standard
error, is largely determined by sample size

29
Sampling error and sample size

30
Sampling error and sample size

31
Central Limit Theorem
•  Three principles
–  The mean of a sampling distribution is the same as the mean of
the population
–  The standard deviation of the sampling distribution is the
square root of the variance of sampling distribution σ2 = σ2 /N
–  The shape of a sampling distribution is approximately normal if
either (a) N >= 30 or (b) the shape of the population
distribution is normal

32
END SEGMENT

33
END LECTURE 9

34

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Lecture slides stats1.13.l09.air

  • 1. Statistics One Lecture 9 The Central Limit Theorem 1
  • 2. Two segments •  Sampling distributions •  Central limit theorem 2
  • 3. Lecture 9 ~ Segment 1 Sampling distributions 3
  • 4. Review of histograms •  Histograms are used to display distributions •  For example, the body temperature of a random sample of healthy people 4
  • 8. Review of histograms •  If a distribution is perfectly normal then the properties of the distribution are known 8
  • 10. The normal distribution & probability •  This allows for predictions about the distribution –  Predictions aren’t certain –  They are probabilistic 10
  • 11. The normal distribution & probability •  If one person is randomly selected from the sample, what is the probability that his or her body temperature is less than Z = 0? –  Easy, p = .50 11
  • 12. The normal distribution & probability •  If one person is randomly selected from the sample, what is the probability that his or her body temperature is greater than Z = 2? (100 F°, 38 C°)? –  p = .02 12
  • 13. The normal distribution & probability •  If this sample is healthy, then no one should have a fever •  I detected a person with a fever •  Therefore, this sample is not 100% healthy 13
  • 14. Sampling distribution •  A distribution of sample statistics, obtained from multiple samples –  For example, •  Distribution of sample means •  Distribution of sample correlations •  Distribution of sample regression coefficients 14
  • 15. Sampling distribution •  It is hypothetical –  Assume a mean is calculated from a sample, obtained randomly from the population –  Assume a certain sample size, N –  Now, assume we had multiple random samples, all of size N, and therefore many sample means –  Collectively, they form a sampling distribution 15
  • 16. Sampling distribution & probability •  If one sample is obtained from a normal healthy population, what is the probability that the sample mean is less than Z = 0? –  Easy, p = .50 16
  • 17. Sampling distribution & probability •  If one sample is obtained from a normal healthy population, what is the probability that the sample mean is greater than Z = 2 (100 F°, 38 C°)? –  p = .02 17
  • 18. Sampling distribution & probability •  If this population is healthy, then no one sample should have a high mean body temperature •  I obtained a very high sample mean •  Therefore, the population is not healthy 18
  • 19. Sampling distribution •  A distribution of sample statistics, obtained from multiple samples, each of size N –  Distribution of sample means –  Distribution of sample correlations –  Distribution of sample regression coefficients 19
  • 21. Lecture 9 ~ Segment 2 The Central Limit Theorem 21
  • 22. Central Limit Theorem •  Three principles –  The mean of a sampling distribution is the same as the mean of the population –  The standard deviation of the sampling distribution is the square root of the variance of sampling distribution σ2 = σ2 /N –  The shape of a sampling distribution is approximately normal if either (a) N >= 30 or (b) the shape of the population distribution is normal 22
  • 23. NHST & Central limit theorem •  Multiple regression –  –  –  –  Assume the null hypothesis is true Conduct a study Calculate B, SE, and t t = B/SE 23
  • 24. NHST & Central limit theorem •  Multiple regression –  If the null hypothesis is true (B=0), then no one sample should have a very low or very high B –  I obtained a very high B –  Therefore, Reject the null hypothesis 24
  • 26. The family of t distributions 26
  • 27. NHST & Central limit theorem •  Multiple regression –  –  –  –  –  Assume the null hypothesis is true Conduct a study Calculate B, SE, and t t = B/SE p-value is a function of t and sample size 27
  • 28. NHST & the central limit theorem •  Multiple regression –  If the null hypothesis is true (B=0), then no one sample should have a very low or very high B –  I obtained a very high B –  Therefore, Reject the null hypothesis –  Very high and very low is p < .05 28
  • 29. NHST & the central limit theorem •  Remember that sampling error, and therefore standard error, is largely determined by sample size 29
  • 30. Sampling error and sample size 30
  • 31. Sampling error and sample size 31
  • 32. Central Limit Theorem •  Three principles –  The mean of a sampling distribution is the same as the mean of the population –  The standard deviation of the sampling distribution is the square root of the variance of sampling distribution σ2 = σ2 /N –  The shape of a sampling distribution is approximately normal if either (a) N >= 30 or (b) the shape of the population distribution is normal 32