Chapter 9 Introduction to the Analysis of Variance Part 1: Oct. 22, 2013.

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Basic Logic of ANOVA Null hypothesis –Several populations all have same mean Do the means of the samples differ more than expected if the null hyp were true? Analyze variances –Focus on variation among our 3 group means Two different ways of estimating population variance

Transcript of Chapter 9 Introduction to the Analysis of Variance Part 1: Oct. 22, 2013.

Chapter 9

Introduction to the Analysis of Variance

Part 1: Oct. 22, 2013

Analysis of Variance (ANOVA)

• Testing variation among the means of several groups

• One-way analysis of variance– Compare 3 or more groups on 1 dimension (IV)

• Compare faculty, staff, students’ attitudes about Blm-Normal.

Basic Logic of ANOVA• Null hypothesis

– Several populations all have same mean• Do the means of the samples differ more than

expected if the null hyp were true?• Analyze variances

– Focus on variation among our 3 group means• Two different ways of estimating population

variance

Basic Logic of ANOVA• Estimating pop. variance from sample variances

– Assume all 3 pop have the same variance average the 3 sample variances into pooled estimate

– Called “Within-groups estimate of the population variance”

• Not affected by whether the null hypothesis is true and the 3 means are actually equal (or not)

Basic Logic of ANOVA• Another way to estimate pop variance:• Use the variation between the means of the

samples– When the null hypothesis is true, 3 samples come from

pops w/same mean • Also assume all 3 pop have same variance, so if Null is true, all

populations are identical (same mean & variance)

– But sample means (and how much they differ) will depend on amount of variability of distribution

– See examples on board (and see Fig 9-1)

– This is why the variation in the 3 means will tell us something about the pop variance

– Called “Between-groups estimate of the population variance”

– But…• When the null hypothesis is not true, the 3 populations have

different means• Samples from those 3 pop will vary because of variation within

each pop and because of variation between pop • See board for drawing (and see fig 9-2)

Basic Logic of ANOVA• Sources of variation in within-groups and between-groups variance estimates (Table 9-2)• When Null is true, Within-groups and Between-groups estimates should be about = (their

ratio = 1)• When Research hyp is true, Between-groups is > within-groups estimate (it has more

variance; ratio > 1)

F Ratio• The F ratio – (the concept)…

– Ratio of the between-groups to within-groups population variance

– If ratio > 1, reject Null • there are signif differences between means

• How much >1 does Fobtained need to be?• Use F table to find F critical value• If F obtained > F critical reject Null

Carrying out an ANOVA• 1) Find population variance from the variation of

scores within each group (Within-groups = S2within)– Will need to start w/estimates of each group’s variance

(S2 will be given in hwk, exam; or see Ch 2 for formula)– In this chapter, we assume equal group sizes, so just

average the 3 estimates of S2

Groups

2Last

22

21

Within2Within

...or N

SSSMSS

Within-groupsvariance a.k.a Mean SquaresWithin (MSwithin)

Between-Group variance• 2a) Estimate Between-groups variance

– focuses on diffs between group means

– Estimate the variance of the distribution of means (S2M)

– First, find “Grand Mean” (GM), the mean of the means (Add all means/# means)

– Then, subtract GM from each mean, square that deviation

– Finally, add all deviation scores…

Between-Group variance

Between

22M

)(df

GMMS

1GroupsBetween Ndf

Variance of distributionof means…will use tofind Betw-grp variance

Sum up squared deviations ofeach group mean – Grand mean

(cont.)– 2b) Take S2

M and multiply by group size (assuming equal group sizes…for Ch 9)

– Gives you S2Between aka MSbetween (Mean Squares Between)

3) Figure F obtained (F Ratio) using 2 MS’s

))((or 2MBetween

2Between nSMSS

or Within

Between2Within

2Between

MSMS

SSF

n= group size,not total samplesize

F Table• Need to use alpha, Between-groups df, & Within-groups df• Between-groups degrees of freedom

• Within-groups degrees of freedom

If F obtained > F critical, reject Null.

Example…

1GroupsBetween Ndf

Last21Within ... dfdfdfdf Df1 = n1 – 1,Df2 = n2 – 1,etc.