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Inferential Statistics

Inferential Statistics - University of Michigan Dearborn

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Page 1: Inferential Statistics - University of Michigan Dearborn

Inferential Statistics

Page 2: Inferential Statistics - University of Michigan Dearborn

lNormal Curve

• Specific bell-shaped curve that is p f punimodal, symmetric, and defined mathematically.

Ubi i– Ubiquitous– Helps clarify the probability of particular

eventsevents– Let’s see an example with a coin toss

Page 3: Inferential Statistics - University of Michigan Dearborn

f f lBasis of Inferential Statistics

1. The approximate shape of the normal curve is everywhere.

2 The bell shape of the normal curve may 2. The bell shape of the normal curve may be translated into percentages (standardization).( )

3. A distribution of means produces a bell-shaped curve even if the original distribution of individual scores is not distribution of individual scores is not bell-shaped, as long as the means are from sufficiently large samples (central li i h )limit theorem)

Page 4: Inferential Statistics - University of Michigan Dearborn

l d bSample Size and Distributions

Page 5: Inferential Statistics - University of Michigan Dearborn

d dStandardization

• Comparing z scores:– Statistics ExamStatistics Exam

• Mean = 78, SD = 6, Your Score = 88• z = 1.67

– Cognition Exam• Mean = 76, SD = 5, Your Score = 85• z = 1.8

Page 6: Inferential Statistics - University of Michigan Dearborn

Transforming z scores into Transforming z scores into Percentiles

Page 7: Inferential Statistics - University of Michigan Dearborn

d lGuinness and Normal Curves

• 1900s: W.S. Gosset hired for quality controlq y– Brewing and bottling both

require a precise amount of q pyeast

– Can’t test every bottle and every barrel• Need a sample!

Page 8: Inferential Statistics - University of Michigan Dearborn

l hCentral Limit Theorem

• A distribution of sample means approaches a normal curve as the ppsample size increases.– Even when the original distribution of Even when the original distribution of

scores is not normally distributed!

Page 9: Inferential Statistics - University of Michigan Dearborn

Sampling Distribution of Means

• A distribution composed of many means that are calculated from all fpossible samples of a given size, all taken from the same population.f p p– Less variability than the actual scores.

– Why does this distribution have less variability?y

Page 10: Inferential Statistics - University of Michigan Dearborn

Sampling Distribution of Means

• We cannot use the standard deviation for this distributionfor this distribution.

Page 11: Inferential Statistics - University of Michigan Dearborn

d dStandard Error

• Standard deviation of a distribution of sample means.p

• New Symbols: σ μ• New Symbols: Mσ Mμ

NMσσ =N

Page 12: Inferential Statistics - University of Michigan Dearborn

kQuick Review

1. As sample size increases, the mean of the sampling distribution of means p gapproaches the mean of the population of individual scoresp p

Page 13: Inferential Statistics - University of Michigan Dearborn

kQuick Review

2. The standard error is smaller than the standard deviation and as sample size pincreases, standard error decreases.

Page 14: Inferential Statistics - University of Michigan Dearborn

kQuick Review

3. The shape of the distribution of means will approximate normal if the ppdistribution of the population of individual scores is normal or if the size of each sample that comprises it is sufficiently large, at least 30.y g ,

– Central Limit Theorem

Page 15: Inferential Statistics - University of Michigan Dearborn

kBack to z Scores

• Remember that we are often working with samples, not entire populations.p , p p– We need a new way to create z scores

( )M( )M

MMzσμ−

=

– z statistic: How many standard errors a sample mean is from the population mean

sample mean is from the population mean

Page 16: Inferential Statistics - University of Michigan Dearborn

l lA Practical Example

• We conduct an IQ test in a class of 40 and find that the class average is 106.g– Population: Mean = 100, SD = 15

– How does our class average measure up when compared with this population?p p p

Page 17: Inferential Statistics - University of Michigan Dearborn

l lA Practical Example

( )MMz μ−=

100100== μμM

372.2325615

4015

====NMσσ

325.640N

Page 18: Inferential Statistics - University of Michigan Dearborn

l lA Practical Example

( ) ( ) 532100106−− MM μ( ) ( ) 53.2372.2

===M

Mzσμ

To convert this z statistic to a percentage To convert this z statistic to a percentage, consult a z table (at the back of the book)