Title: Chapter 13: Introduction to Analysis of Variance
1Chapter 13 Introduction to Analysis of Variance
- The Single Factor Independent Measures Design
2Concepts you will need
- Variability
- Sum of Squares (SS)
- Sample variance
- df
- The logic of hypothesis testing
- The basic logic of the t test
- t ___________________________
3Chapter Overview
- Preview Rogers, Kuiper Kirker, (1977)
self-reference study. - 13.1 Intro - Advantages of ANOVA over t-test,
flexibility of ANOVA for different types of
designs, definitions of factors and factorial
designs - 13.2 Logic of ANOVA
- 13.3 ANOVA notation formulas
- 13.4 Distribution of F ratios
- 13.5 Examples of hypothesis testing with ANOVA
- Calculation of Effect Size
- 13.6 Post Hoc Tests
- 13.7 Relationship between ANOVA t-tests
4Chap Preview
- Rogers, Kuiper, Kirker (1977) memory study has
four experimental conditions (4 treatment
conditions). - Results in Figure 13.1 on p. 388.
-
- With 4 independent groups, we would need to do 6
t-tests to analyse these data. - Problem is
513.1 Introduction
- Anova and t- tests do the same job.
- Both test for ..
- Problem with multiple t-tests
- Probability of making a Type 1 error ..
- ANOVA avoids increased Type 1 error by doing 1
single test to compare
6Other advantages of ANOVA overt-tests
- ANOVA used to test for mean differences in a wide
variety of research situations. - See Fig. 13.2 for situation with ...
- ANOVA permits analysis of ..
- See Fig. 13.3 for this situation
7ANOVA Terminology
- Factor one independent..
- Levels individual ........
- Self-reference study had .
- Expt. with one independent variable (IV) is
called a single factor design (like
self-reference study and Figure 13.2). - Expt with gt 1 factor (e.g., 2 IVs) is known as
..................... design (like Fig. 13.3). - ANOVA can be used to analyse results from all
designs - Independent...
- Repeated ..
- Mixed design mixture of ..
8Single Factor Independent Measures Design
- Typical set-up for independent measures
experiment shown in study investigating effect of
room temperature on learning (see Table 13.1) - Note separate sample for each of the (3)
treatment conditions, i.e. ...
9Table 13-1 (p. 393)Hypothetical data from an
experiment examining learning performance under
three temperature conditions.
10Statistical Hypotheses for ANOVA
- Goal of ANOVA is to decide between the null and
alternative hypotheses - Ho (null) There are no differences between the
populations (treatments). - The observed differences..
- That is, in the population, room temperature..
- Ho u1
11Statistical Hypotheses for ANOVA
- H1(alternative) The differences between the
sample means represent .. - That is, the populations (treatments) really are
.. - The mean differences btw. samples are genuine
not .. - E.g. Room temperature does ..
- H1 u1 ? is one
possibility - General form of H1 At least one population mean
is ..
12Test statistic for Anova The Numerator
- ANOVA similar logic and structure to t-test
- t obtained difference between the 2 sample
means - difference expected by chance (due to sampling
error) - In ANOVA we calculate a F ratio rather than a
t-ratio. - F ..
between sample means - .. expected by
chance (due to sampling error)
13F Ratio The Numerator
- F .. between sample
means - .. expected by chance (due to
sampling error) - The greater the differences btw. sample means,
the greater the.. - F ratio based on variance of sample means rather
than differences btw. sample means - But still testing for significance of differences
btw. means. - Why variance of means rather than difference btw.
means? - Because ..
14Test statistic for Anova The Denominator
- Both t and F statistics measure differences
expected by chance - For t -- diff. btw. means expected by chance
- For F -- ..
expected by chance - So smaller the value expected by chance, the
smaller ... - As with t, the larger the value of F, the greater
the chance that the Ho .. - and that we will conclude that the difference
btw. means is due to the different .. - Like t, we must compare obtained F to required F
(criterion value) at chosen alpha level - As with t, we have F tables to allow us to do
this.
15SUMMARY
- Anova works on variation between (among) means
rather than .. - However, Anova uses variation among means to
decide if the means are .. - Both t-test and ANOVA testing for significance of
.. - Same purpose, different method.
- Also Anova can be used with more than just 2
means which is a limitation of the t-test. - ANOVA can be used with independent measures or
repeated measures designs (Ch. 14) - ANOVA can also be used with more than 1 factor
(gt1 IV) (Ch. 15)
1613.2 The Logic of ANOVA
- Use room temperature and learning example (see
Table 13.1 on next slide for data)
17Table 13-1 (p. 401)Hypothetical data from an
experiment examining learning performance under
three temperature conditions.
18ANOVA calculations
- Numbers in Table 13.1 are not all the same
- There is .
- Goal of ANOVA is to measure the amount of
variability and to .. - Determine the ..
- First, we calculate total variability using all
the data - Calculate SS ..
- Then we analyse the total variability
- Break it down into ..
- Entire analysis shown on next slide
19Figure 13-4 (p. 403)The independent-measures
analysis of variance partitions, or analyzes, the
total variability into two components variance
between treatments and variance within treatments.
20ANOVA Calculations
- Total variability broken down into 2 components
or sources of variability - 1. Between Treatments Variance
- Some of the variability in scores is due to ..
- 2. Within Treatments Variance
- Some of the variability in scores is due to
differences in scores of .. - Within treatments variance provides a measure of
variability that is .
21Between treatments variance
- Measures how much difference exists between
treatment conditions - ANOVA decides between 2 explanations of between
treatments variance - 1. Differences between scores in the various
treatment conditions .. - Differences reflects naturally occurring
differences that exist between one sample and
another. - Unplanned ..
- 2. Differences between scores in the various
treatment conditions is due to .. - Differences are too large to be due to ..
22Within treatments variance
- Differences due to chance are measured by ..
- Individual within same treatment condition are
treated identically - Any difference in their scores is assumed to be
.. - One primary sources of chance differences are .
- Different individuals in different ..
- Second source of chance differences is ..
- ..
errors can contribute to EE