Title: Inference and Inferential Statistics
1Inference and Inferential Statistics
- Methods of Educational Research
- EDU 660
2Inference
- Draw conclusions from the data
- Allow researchers to generalize to a population
of individuals based on information obtained from
a sample of those individuals - Assesses whether the results obtained from a
sample are the same as those that would have been
calculated for the entire population
3Probabilistic nature of inference
- How likely is it?
- Are the results that we have seen due to chance
or some real difference? - Mean score for 2 different groups
- Example
- X1 23.5 X2 31.6
- Is this a real difference between these
- scores?
4Normal distribution
- A bell shaped curve reflecting the distribution
- of many variables of interest to educators
5Normal distribution
- Characteristics
- 50 of the scores fall above the mean and 50
fall below the mean - The mean, median, and mode are the same values
- Most participants score near the mean the
further a score is from the mean the fewer the
number of participants who attained that score - Specific numbers or percentages of scores fall
between - ?1 SD, 68
- ?2 SD, 95
- ?3 SD, 99
6Null and Alternative hypotheses
- The null hypothesis represents a statistical tool
important to inferential tests of significance - The alternative hypothesis usually represents the
research hypothesis related to the study
7Null and Alternative hypotheses
- Comparisons between groups
- Null no difference between the means scores of
the groups - Alternative there are differences between the
mean scores of the groups - Relationships between variables
- Null no relationship exists between the
variables being studied - Alternative a relationship exists between the
variables being studied
8Test of Significance
- Statistical analyses to help decide whether to
accept or reject the null hypothesis - Alpha a level
- An established probability or significance level
which serves as the criterion to determine
whether to accept or reject the null hypothesis - Common levels in education
- a .01 1 probability level
- a .05 5 probability level
- a .10 10 probability level
9Type I and Type II Errors
- Correct decisions
- The null hypothesis is true and it is accepted
- The null hypothesis is false and it is rejected
- Incorrect decisions
- Type I error - the null hypothesis is true and it
is rejected - Type II error the null hypothesis is false and
it is accepted
10Type I and Type II Errors
As a becomes smaller there is a smaller chance of
a Type 1 error but a greater chance of a Type 2
error.
11One-Tailed and Two-Tailed Tests
- One-tailed an anticipated outcome in a specific
direction - Treatment group mean is significantly
higher/lower than the control group mean - Two-tailed anticipated outcome not directional
- Treatment and control groups are equal
- Ample justification needed for using one-tailed
tests
12One-Tailed and Two-Tailed Tests
13Test of Significance
- Specific tests are used in specific situations
based on the number of samples and the
statistics of interest - One sample tests of the mean, variance,
proportions, correlations, etc. - Two sample tests of means, variances,
proportions, correlations, etc.
14Test of Significance
- Types of inferential statistics
- Parametric tests more powerful tests that
require certain assumptions to be met - t - tests
- ANOVA
- Non-parametric tests less powerful
- Chi-Square
15Form a Null Hypothesis
- H0 There is no significant difference in the
mean scores for the 2 groups - Acceptance of the null hypothesis
- The difference between groups is too small to
attribute it to anything but chance - Rejection of the null hypothesis
- The difference between groups is so large it can
be attributed to something other than chance
(e.g., experimental treatment)
16The t Test
- Used to test whether 2 means are significantly
different at a selected probability - The t test determines whether the observed
difference is sufficiently larger than a
difference that would be expected by chance
17Types of t Tests
- t test for independent samples
- The members of one sample are not related to
those of the other sample in any systematic way -
come from the same population - Examples
- 1. Examine the difference between the mean
scores for an experimental and control group - 2. Examine the mean scores for men and women in
sample
18Types of t Tests
- t test for NonIndependent samples
- Used to compare groups that are formed to examine
a samples performance on a single measure or
multiple measures - Example examining the difference between
pre-test and post-test mean scores for a single
class of students
19Analysis of Variance - ANOVA
- ANOVA is used to test whether there is
- a significant difference between 2 or
- more means at a specified significance
- Level (usually 5)
- Example Is there a significant difference in
the mean scores on a test (µ1, µ2, µ3) of 3
classes of college students?
20ANOVA
- Omnibus Null Hypothesis
- H0 µ1 µ2 µ3
- Note repeated use of numerous t tests for more
than 2 means will result in an increased
probability of type I errors - p 1 - (1 a)c where c is the number of t
tests
21Analysis of Variance - ANOVA
- If an ANOVA determines that there is a
significant difference among a group of means,
what then? - Multiple comparison methods are used to determine
what means are different Scheffe test
22Steps in Statistical Testing
- State the null and alternative hypotheses
- Set alpha level - 0.05, 0.01 etc
- Identify the appropriate test of significance
- Identify the test statistic
- Compute the test statistic and probability level
- Is the probability level less than the specified
probability? - Accept or reject hypothesis