2. Key Question
What is the probability that the difference
found between these samples would have
occurred if there were really no
differences in the total populations?
3. Alpha level
p > .05 (deemed likely to be a result of chance)
p < .05 (not likely to be a result of chance)
p < .01 (less likely to be a result of chance)
p < .001 (even less likely to be a result of chance)
Researchers are more often reporting the actual
probability value rather than using < or > signs.
(example p = .063)
4. The t test
An inferential statistic tool that is appropriate
for comparing differences between two
groups.
t(49)=1.34, p> .05
First letter identifies the t test.
# in ( ) represents # of people in study.
1.34 is the result.
p probability is > 5% chance (or 5 in 100).
5. Analysis of Variance/ ANOVA
Useful when comparing more than 2 groups (t test can only
compare 2 groups)
F(3,53)=26.26,p<.001
F identifies the ANOVA
3= # of mean scores compared + 1 (3+1=4 groups compared)
53 = approx. # of people in study
26.26= result of calculation of F ratio
p< .001= probability is< 1 in 1,000 that the results are likely to
be a result of chance.
The problem is that this doesn’t tell us exactly which group had
those differences. The researcher then may choose to make
paired comparisons. See figure 5.2 on p. 118
6. Analysis of Covariance/ ANCOVA
This type of ANOVA is used when there is reason to believe
that the groups being compared were not the same before the
study began.
Scores may be statistically adjusted to account for differences
on another variable.
Example: Two groups of students are being compared, full and
part time. The full time students’ mean scores on a posttest
were 38; part time students’ mean was 34. They had been
given a pretest at the beginning of class in which they scored
full time-15 and part time-13. These groups were not
equivalent before the intervention, therefore pretest scores
were adjusted to come up with a more accurate probability
outcome.
7. Chi-Square (x²)
A nonparametric tool- which means it can be used
without assumptions about the data distribution.(ex:
bell-shaped curve)
This method is used when data is not in a form that
can be averaged.
x²(2, N = 120) = 12.39, p = .002
The probability of getting these results from a
sample if the population had no preference is 2 in
1,000.
8. Regression Analysis
Researchers use this technique when there is
statistical significance (due to the correlation
coefficient) between variables to determine if one
can directly predict the other.
They combine the correlation coefficients, means,
and standard deviations of each variable. They set it
up in equation form that will determine a direct
prediction.
Y = .35X + 2.50
(Y is the predicted # , X is a score of some sort)
9. Multiple Regression
This is a more complex form of the regression analysis. It is
used when the relationship between more than two variables is
being studied.
Example: Y = .31X1 + 3.42X2 – 15.76
Standard error of estimate- # calculated from the standard
deviation and correlation coefficient. As the correlation
between two variables goes up, the standard error of estimate
goes down- providing a better prediction.
Confidence interval- these are used to increase the standard
error of estimate for greater confidence in their prediction.
See figure 5.3 on p. 122
10. Statistical Significance
When a difference between groups is labeled as unlikely to
have occurred by chance, it is labeled as statistically
significant. (p =<.05)
Depends on size of the difference or relationship (correlation
coefficient), # of participants in the study.
Remember, identifying a cause for the significance and taking
into consideration the effects of extraneous variables would be
practicing good research strategy.
Effect size- A calculated standardized difference between
groups. Subtract the mean of one group from the mean of
another then divide by a standard deviation. Researchers
typically look for a large effect size. Cohen’s d is a current
technique that recommends that small, medium, and large
differences have corresponding values of .20, .50, & .80.
11. Null Hypothesis
Often the form in which data will be analyzed in the
results section of a study.
May be “rejected” or “failed to reject”.
Rejecting occurs when the directional or
nondirectional hypotheses are correct.
Failure to reject occurs when researchers allow for
the possibility that new data could reject the
hypothesis.
***one-tailed test-refers to a study that did not use a
null hypothesis.
12. Interpreting Graphs
Be very critical of the visuals you find in a
research study.
Graphs can be very misleading, whether
intentional or not.
Pay attention to the #’s on the scale and not
just the visual impression.
Read and re-read a graph, BE CRITICAL!!
13. Key Questions in Reviewing a Study
Did the researchers clearly report what they
found?
Did they report all of that information? If not,
did they explain why it was omitted?