Frequencies:tables for relative and
absolute. Consider requesting n-tiles
Peakedness: compute the
kurtosis of a variable
To test departures from normality: for N greater
than 1000, refer the critical ratio of the kurtosis
measure to a table of the unit normal curve; for N
between 200 and 1000, refer the kurtosis measure
to a table for testing kurtosis; for N less than 200,
use Geary's criterion.
2 VARIABLES
Scale of Measurement?
1 Interval,
1 Nominal
Is interval
variable
dependent?
YES: measure of
strength or test of
significance?
Test of
significance:
assuming homoscedasticity
across levels of ind. variable,
perform an analysis of variance
and F-test for significance
With no homoscedasticity across
levels of ind. variable, use ANOVA.
For hypothesis testing use the
Welch statistic, the Brown-Forsythe
statistic, or the t-test
Measure of strength:
Use the
ANOVA, and Omega Squared
Intraclass Correlation Coefficient
Kelley's Epsilon Squared
NO: ANOVA to perform
an analysis of variance
1 Nominal,
1 Ordinal
compute the Friedman test and
probability of chance occurrence.
Use Freeman's
coefficient of
differentiation, theta
1 Interval,
1 Ordinal
If ordinal is based on an
underlying normally
distributed interval variable,
use Jaspen's Coefficient of
Multiserial Correlation
Both Nominal
Both variables
2-point scale?
YES: What will
be measured?
Symmetry: Use McNemar's test of
symmetry; it is equivalent to Cochran's Q
Covariation: use
Yule's Q Phi
NO: At least one is not a
2-point scale and one
is considered an
independent variable
Statistic based on
number of cases
in each category
use Goodman and
Kruskal's tau b
Statistic based on
number of cases in
modal categories
calculate the asymmetric
lambdas A and B
Both Ordinal
Distinction between dependent
& independent variables?
YES: use
Somer's d for 2
ordinal variables
NO: What do you
want to measure?
Agreement: no applicable statistic,
but data may be transformed to
ranks and r or Krippendorff's r used
Covariance: depending on if the
ranks are treated as interval scales,
use Kendall's tau-a, tau-b, tau-c
Goodman and Kruskal's gamma,
Kim's d, or Spearman's rho (rs)
Both Interval
Distinction between dependent
& independent variables?
YES: looking for
linear relationship?
YES: use the F-test, also
computed by Regression
NO: Curvilinear relationships- use the
F-test, computed by Regression, equal
to t-squared, for each coefficient
NO: looking for equal
means on both variables?
YES: calculate the t-test
for paired observations
NO: treat the relationship as linear
What do want to measure?
Agreement: penalty
without same distribution?
YES: Robinson's A or
the intraclass
correlation coefficient.
The test is the F-test.
NO: Use Krippendorff's
coefficient of agreement
Covariance:
Use Pearson Product-Moment r (correlation
coefficient), Biserial R, or Tetrachoric r depending
on how many of the variables are dichotomous