POST%20HOC%20TESTS - PowerPoint PPT Presentation

About This Presentation
Title:

POST%20HOC%20TESTS

Description:

Week 2 PART III POST-HOC TESTS POST HOC TESTS When we get a significant F test result in an ANOVA test for a main effect of a factor with more than two levels ... – PowerPoint PPT presentation

Number of Views:172
Avg rating:3.0/5.0
Slides: 23
Provided by: psychol73
Category:

less

Transcript and Presenter's Notes

Title: POST%20HOC%20TESTS


1
Week 2 PART III
POST-HOC TESTS
2
POST HOC TESTS
  • When we get a significant F test result in an
    ANOVA test for a main effect of a factor with
    more than two levels, this tells us we can reject
    Ho
  • i.e. the samples are not all from populations
    with the same mean.
  • We can use post hoc tests to tell us which groups
    differ from the rest.

3
POST HOC TESTS
  • There are a number of tests which can be used.
    SPSS has them in the ONEWAY and General Linear
    Model procedures
  • SPSS does post hoc tests on repeated measures
    factors, within the Options menu

4
Sample data
5
Post Hoc test button
6
Select desired test
7
ANOVA Table
8
Post Hoc Tests
9
Choice of post-hoc test
  • There are many different post hoc tests, making
    different assumptions about equality of variance,
    group sizes etc.
  • The simplest is the Bonferroni procedure

10
Bonferroni Test
  • first decide which pairwise comparisons you will
    wish to test (with reasonable justification)
  • get SPSS to calculate t-tests for each comparison
  • set your significance criterion alpha to be .05
    divided by the total number of tests made

11
Bonferroni test
  • repeated measures factors are best handled this
    way
  • ask SPSS to do related t-tests between all
    possible pairs of means
  • only accept results that are significant below
    .05/k as being reliable (where k is the number of
    comparisons made)

12
PLANNED COMPARISONS/ CONTRASTS
  • It may happen that there are specific hypotheses
    which you plan to test in advance, beyond the
    general rejection of the set of null hypotheses

13
PLANNED COMPARISONS
  • For example
  • a) you may wish to compare each of three patient
    groups with a control group
  • b) you may have a specific hypothesis that for
    some subgroup of your design
  • c) you may predict that the means of the four
    groups of your design will be in a particular
    order

14
PLANNED COMPARISONS
  • Each of these can be tested by specifying them
    beforehand - hence planned comparisons.
  • The hypotheses should be orthogonal - that is
    independent of each other

15
PLANNED COMPARISONS
  • To compute the comparisons, calculate a t-test,
    taking the difference in means and dividing by
    the standard error as estimated from MSwithin
    from the ANOVA table

16
TEST OF LINEAR TREND planned contrast
  • for more than 2 levels, we might predict a
    constantly increasing change across levels of a
    factor
  • In this case we can try fitting a model to the
    data with the constraint that the means of each
    condition are in a particular rank order, and
    that they are equidistant apart.

17
TEST OF LINEAR TREND
  • The Between Group Sum of Squares is then
    partitioned into two components.
  • the best fitting straight line model through the
    group means
  • the deviation of the observed group means from
    this model

18
TEST OF LINEAR TREND
  • The linear trend component will have one degree
    of freedom corresponding to the slope of the
    line.
  • Deviation from linearity will have (k-2) df.
  • Each of these components can be tested, using the
    Within SS, to see whether it is significant.

19
TEST OF LINEAR TREND
  • If there is a significant linear trend, and
    non-significant deviation from linearity, then
    the linear model is a good one.
  • For kgt3, The same process can be done for a
    quadratic trend - a parabola is fit to the means.
    For example, you may be testing a hypothesis
    that as dosage level increases, the measure
    initially rises and then falls (or vice versa).

20
TEST OF LINEAR TREND
21
TEST OF LINEAR TREND
22
TEST OF LINEAR TREND
Write a Comment
User Comments (0)
About PowerShow.com