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A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected,...

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MULTIPLE COMPARISON TESTS A PRIORI OR PLANNED CONTRASTS
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Page 1: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

MULTIPLE COMPARISON TESTS

A PRIORI OR PLANNED CONTRASTS

Page 2: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ANOVA

ANOVA is used to compare means. However, if a difference is detected,

and more than two means are being compared, ANOVA cannot tell you where the difference lies.

In order to figure out which means differ, you can do a series of tests: Planned or unplanned comparisons of

means.

Page 3: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED or A PRIORI CONTRASTS

A comparison between means identified as being of utmost interest during the design of a study, prior to data collection.

You can only do one or a very small number of planned comparisons, otherwise you risk inflating the Type 1 error rate.

You do not need to perform an ANOVA first.

Page 4: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

UNPLANNED or A POSTERIORI CONTRASTS

A form of “data dredging” or “data snooping”, where you may perform comparisons between all potential pairs of means in order to figure out where the difference(s) lie.

No prior justification for comparisons. Increased risk of committing a Type 1

error. The probability of making at least one type

1 error is not greater than α= 0.05.

Page 5: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED ORTHOGONAL AND NON-ORTHOGONAL CONTRASTS

Planned comparisons may be orthogonal or non-orthogonal.

Orthogonal: mutually non-redundant and uncorrelated contrasts (i.e.: independent).

Non-Orthogonal: Not independent. For example:

4 means: Y1 ,Y2, Y3, and Y4

Orthogonal: Y1- Y2 and Y3- Y4

Non-Orthogonal: Y1-Y2 and Y2-Y3

Page 6: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ORTHOGONAL CONTRASTS

Limited number of contrasts can be made, simultaneously.

Any set of contrasts may have k-1 number of contrasts.

Page 7: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ORTHOGONAL CONTRASTS

For Example: k=4 means. Therefore, you can make 3 (i.e.: 4-1)

orthogonal contrasts at once.

Page 8: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

HOW DO YOU KNOW IF A SET OF CONTRASTS IS ORTHOGONAL?

∑cijci’j=0 where the c’s are the particular coefficients

associated with each of the means and the i indicates the particular comparison to which you are referring.

Multiply all of the coefficients for each particular mean together across all comparisons.

Then add them up! If that sum is equal to zero, then the

comparisons that you have in your set may be considered orthogonal.

Page 9: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

HOW DO YOU KNOW IF A SET OF CONTRASTS IS ORTHOGONAL?

For Example:Set Coefficients Contrasts

c1 c2 c3 c4

11 -1 - - Y1-Y2

- - 1 -1 Y3-Y4

½ ½ -½ -½ (Y1+Y2)/2 –(Y3+Y4)/2cijci’j ½ -½ -½ ½ ∑cijci’j 0

(After Kirk 1982)(c1)Y1 + (c2)Y2 = Y1 – Y2

Therefore c1 = 1 and c2 = -1 because (1)Y1 + (-1)Y2 = Y1-Y2

Page 10: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ORTHOGONAL CONTRASTS

There are always k-1 non-redundant questions that can be answered.

An experimenter may not be interested in asking all of said questions, however.

Page 11: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING A t STATISTIC

A planned comparison addresses the null hypothesis that all of your comparisons between means will be equal to zero. Ho=Y1-Y2=0

Ho= Y3-Y4=0

Ho= (Y1+Y2)/2 –(Y3+Y4)/2 These types of hypotheses can be

tested using a t statistic.

Page 12: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING A t STATISTIC

Very similar to a two sample t-test, but the standard error is calculated differently.

Specifically, planned comparisons use the pooled sample variance (MSerror )based on all k groups (and the corresponding error degrees of freedom) rather than that based only on the two groups being compared.

This step increases precision and power.

Page 13: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING A t STATISTIC

Evaluate just like any other t-test. Look up the critical value for t in the

same table. If the absolute value of your

calculated t statistic exceeds the critical value, the null hypothesis is rejected.

Page 14: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING A t STATISTIC: NOTE

All of the t statistic calculations for all of the comparisons in a particular set will use the same MSerror.

Thus, the tests themselves are not statistically independent, even though the comparisons that you are making are.

However, it has been shown that, if you have a sufficiently large number of degrees of freedom (40+), this shouldn’t matter.

(Norton and Bulgren, as cited by Kirk, 1982)

Page 15: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING AN F STATISTIC

You can also use an F statistic for these tests, because t2 = F.

Different books prefer different methods.

The book I liked most used the t statistic, so that’s what I’m going to use throughout.

SAS uses F, however.

Page 16: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

CONFIDENCE INTERVALS FOR ORTHOGONAL CONTRASTS

A confidence interval is a way of expressing the precision of an estimate of a parameter.

Here, the parameter that we are estimating is the value of the particular contrast that we are making.

So, the actual value of the comparison (ψ) should be somewhere between the two extremes of the confidence interval.

Page 17: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

CONFIDENCE INTERVALS FOR ORTHOGONAL CONTRASTS

The values at the extremes are the 95% confidence limits.

With them, you can say that you are 95% confident that the true value of the comparison lies between those two values.

If the confidence interval does not include zero, then you can conclude that the null hypothesis can be rejected.

Page 18: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ADVANTAGES OF USING CONFIDENCE INTERVALS

When the data are presented this way, it is possible for the experimenter to consider all possible null hypotheses – not just the one that states that the comparison in question will equal 0.

If any hypothesized value lies outside of the 95% confidence interval, it can be rejected.

Page 19: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

CHOOSING A METHOD

Orthogonal tests can be done in either way.

Both methods make the same assumptions and are equally significant.

Page 20: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ASSUMPTIONS

Assumptions: The populations are approximately normally

distributed. Their variances are homogenous.

The t statistic is relatively robust to violations of these assumptions when the number of observations for each sample are equal.

However, when the sample sizes are not equal, the t statistic is not robust to the heterogeneity of variances.

Page 21: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

HOW TO DEAL WITH VIOLATIONS OF ASSUMPTIONS

When population variances are unequal, you can replace the pooled estimator of variance, MSerror, with individual variance estimators for the means that you are comparing.

There are a number of possible procedures that can be used when the variance between populations is heterogeneous: Cochran and Cox Welch Dixon, Massey, Satterthwaite and Smith

Page 22: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

TYPE I ERRORS AND ORTHOGONAL CONTRASTS

For C independent contrasts at some level of significance (α), the probability of making one or more Type 1 errors is equal to:  1-(1-α)C

As the number of independent tests increases, so does the probability of committing a Type 1 error.

This problem can be reduced (but not eliminated) by restricting the use of multiple t-tests to a priori orthogonal contrasts.

Page 23: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

A PRIORI NON-ORTHOGONAL CONTRASTS

Contrasts of interest that ARE NOT independent.

In order to reduce the probability of making a Type 1 error, the significance level (α) is set for the whole family of comparisons that is being made, as opposed to for each individual comparison.

For Example: Entire value of α for all comparisons combined

is 0.05. The value for each individual comparison would

thus be less than that.

Page 24: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

WHEN DO YOU DO THESE?

When contrasts are planned in advance.

They are relatively few in number. BUT the comparisons are non-

orthogonal (they are not independent).

i.e.: When one wants to contrast a control group mean with experimental group means.

Page 25: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE

A.K.A.: Bonferoni t procedure. Involves splitting up the value of α

among a set of planned contrasts in an additive way.

For example: Total α = 0.05, for all contrasts. One is doing 2 contrasts. α for each contrast could be 0.025, if we

wanted to divide up the α equally.

Page 26: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE

If the consequences of making a Type 1 error are not equally serious for all contrasts, then you may choose to divide α unequally across all of the possible comparisons in order to reflect that concern.

Page 27: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE

This procedure also involves the calculation of a t statistic (tD).

The calculation involved in finding tD is identical to that for determining t for orthogonal tests:

Page 28: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE

However, you use a different table in order to look up the critical value (tDα;C,v ). Your total α value (not the value per

comparison). Number of comparisons (C). And v, the number of degrees of

freedom.

Page 29: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE: ONE-TAILED TESTS

The table also only shows the critical values for two-tailed tests.

However, you can determine the approximate value of tDα;C,v for a one-tailed test by using the following equation:  tDα;C,v ≈ zα/C + (z3

α/C + zα/C)/4(v-2)▪ Where the value of zα/C can be looked up in

yet another table (“Areas under the Standard Normal Distribution”).

Page 30: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE

Instead of calculating tD for all contrasts of interest, you can simply calculate the critical difference (ψD) that a particular comparison must exceed in order to be significant: ψD = tDα/2;C,v √(2MSerror/n).

Then compare this critical difference value to the absolute values of the differences between the means that you compared.

If they exceed ψD, they are significant.

Page 31: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN’S MULTIPLE COMPARISON PROCEDURE

MEANS Y1 Y2 Y3 Y4 Y5

Y1 - 12.0 6.7 10.5 3.6

Y2 - 5.3 1.5 8.4

Y3 - 3.8 3.1

Y4 - 6.9

Y5 -

For Example: You have 5 means (Y1 through Y5). ΨD = 8.45 Differences between means are:

(After Kirk 1982)

Those differences that exceed the calculated value of ΨD (8.45, in this case) are significant.

Page 32: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN-SIDAK PROCEDURE A modification of the Dunn procedure.

t statistic (tDS) and critical difference (ψDS).

There isn’t much difference between the two procedures at α < 0.01.

However, at increased values of α, this procedure is considered to be more powerful and more precise.

Calculations are the same for t and ψD. Table is different.

Page 33: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNN-SIDAK PROCEDURE

However, it is not easy to allocate the total value of α unevenly across a particular set of comparisons.

This is because the values of α for each individual comparison are related multiplicatively, as opposed to additively.

Thus, you can’t simply add the α’s for each comparison together to get the total value of α for all contrasts combined.

Page 34: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DUNNETT’S TEST

For contrasts involving a control mean. Also uses a t statistic (tD’) and critical

difference (ψD’). Calculations are the same for t and ψ. Different table. Instead of C, you use k, the number of

means (including the control mean). Note: unlike Dunn’s and Dunn-Sidak’s,

Dunnet’s procedure is limited to k-1 non-orthogonal comparisons.

Page 35: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

CHOOSING A PROCEDURE : A PRIORI NON-ORTHOGONAL TESTS

Often, the use of more than one procedure will appear to be appropriate.

In such cases, compute the critical difference (ψ) necessary to reject the null hypothesis for all of the possible procedures.

Use the one that gives the smallest critical difference (ψ) value .

Page 36: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

A PRIORI ORTHOGONAL and NON-ORTHOGONAL CONTRASTS

The advantage of being able to make all planned contrasts, not just those that are orthogonal, is gained at the expense of an increase in the probability of making Type 2 errors.

Page 37: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

A PRIORI and A POSTERIORI NON-ORTHOGONAL CONTRASTS

When you have a large number of means, but only comparatively very few contrasts, a priori non-orthogonal contrasts are better suited.

However, if you have relatively few means and a larger number of contrasts, you may want to consider doing an a posteriori test instead.

Page 38: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

A POSTERIORI CONTRASTS There are many kinds, all offering different

degrees of protection from Type 1 and Type 2 errors: Least Significant Difference (LSD) Test Tukey’s Honestly Significant Difference (HSD) Test Spjtotvoll and Stoline HSD Test Tukey-Kramer HSD Test Scheffé’s S Test Brown-Forsythe BF Procedure Newman-Keuls Test Duncan’s New Multiple Range Test

Page 39: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

A POSTERIORI CONTRASTS

Most are good for doing all possible pair-wise comparisons between means.

One (Scheffé’s method) allows you to evaluate all possible contrasts between means, whether they are pair-wise or not.

Page 40: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

CHOOSING AN APPROPRIATE TEST PROCEDURE

Trade-off between power and the probability of making Type 1 errors.

When a test is conservative, it is less likely that you will make a Type 1 error.

But it also would lack power, inflating the Type 2 error rate.

You will want to control the Type 1 error rate without loosing too much power.

Otherwise, you might reject differences between means that are actually significant.

Page 41: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DOING PLANNED CONTRASTS USING SAS

You have a data set with one dependent variable (y) and one independent variable (a).

(a) has 4 different treatment levels (1, 2, 3, and 4).

You want to do the following comparisons between treatment levels: 1)Y1-Y2

2) Y3-Y4

3) (Y1-Y2)/2 - (Y3-Y4)/2

Page 42: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

ARE THEY ORTHOGONAL?

SET COEFFICIENTS CONTRASTS

1

c1 c2 c3 c4

1 -1 - - Y1-Y2

- - 1 -1 Y3-Y4

½ ½ -1/2 -1/2 (Y2+Y2)/2 – (Y3+Y4)/2

cijci’j 1/2 -1/2 -1/2 ½∑cijci’j 0

YES!...BUT THEY DON’T HAVE

TO BE

Page 43: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DOING PLANNED ORTHOGONAL CONTRASTS USING SAS

SAS INPUT:

data dataset;input y a;cards;3 14 27 37 4.............proc glm;class a;model y = a;contrast 'Compare 1 and 2' a 1 -1 0 0;contrast 'Compare 3 and 4' a 0 0 1 -1;contrast 'Compare 1 and 2 with 3 and 4' a 1 1 -1 -1;run;

Give your dataset an informative name.Tell SAS what you’ve inputted: column 1 is your y variable (dependent) and column 2 is your a variable (independent).This is followed by your actual data.

Use SAS procedure proc glm.“Class” tells SAS that a is categorical.

“Model” tells SAS that you want to look at the effects that a has on y.

Then enter your “contrast” statements.

Indicate “weights” (kind of like the coefficients).

Page 44: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

DOING PLANNED ORTHOGONAL CONTRASTS USING SAS

ANOVA

Page 45: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

RECOMMENDED READING

Kirk RE. 1982. Experimental design: procedures for the behavioural sciences. Second ed. CA: Wadsworth, Inc.

Field A, Miles J. 2010. Discovering Statistics Using SAS. London: SAGE Publications Ltd.

Institute for Digital Research and Education at UCLA: http://www.ats.ucla.edu/stat/ Stata, SAS, SPSS and R.

Page 46: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

A PRIORI OR PLANNED CONTRASTS

THE END

Page 47: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

EXTRA SLIDES

Page 48: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING A t STATISTIC

t = ∑cjYj/ √MSerror∑cj/nj

Where c is the coefficient, Y is the corresponding mean, n is the sample size, and MSerror is the Mean Square Error.

Page 49: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

PLANNED COMPARISONS USING A t STATISTIC

For Example, you want to compare 2 means: Y1 = 48.7 and Y2=43.4

c1 = 1 and c2 = -1 n=10 MSerror=28.8

t = (1)48.7 + (-1)43.4 [√28.8(12/10) + (-12/10)]

= 2.21

Page 50: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

CONFIDENCE INTERVALS FOR ORTHOGONAL CONTRASTS

(Y1-Y2) – tα/2,v(SE) ≤ ψ ≤ (Y1-Y2) – tα/2,v(SE)

For Example: If, Y1 = 48.7, Y2 = 43.4, and SE(tα(2),df) = 4.8

(Y1-Y2) – SE(tα(2),df) = 0.5

(Y1-Y2) + SE(tα(2),df) = 10.1 Thus, you can be 95% confident that the true value

of ψ is between 0.5 and 10.1. Because the confidence interval does not include 0,

you can also reject the null hypothesis that Y1-Y2 = 0.

(Example after Kirk 1982)

Page 51: A PRIORI OR PLANNED CONTRASTS. ANOVA is used to compare means. However, if a difference is detected, and more than two means are being compared, ANOVA.

TYPE I ERRORS AND ORTHOGONAL CONTRASTS

As the number of independent tests increases, so does the probability of committing a Type 1 error.

For Example, when α = 0.05: 1-(1-0.05)3=0.14 (C=3) 1-(1-0.05)5=0.23 (C=5) 1-(1-0.05)10=0.40 (C=10)

(Example after Kirk 1982)


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