3. ONE WAY ANOVA:
compares the means of two or more
independent groups in order to determine
whether there is statistical evidence that the
associated population means are significantly
different
One-Way ANOVA is a parametric test
This test is also known as: One-Factor
ANOVA
4. FUNCTION:
The one-way analysis of variance (ANOVA) is used to
determine whether there are any statistically significant
differences between the means of three or more
independent (unrelated) groups
TWO HYPOTHESES:
The null hypothesis (H0) is that there is no difference
between the groups and equality between means
(walruses weigh the same in different months).
The alternative hypothesis (H1) is that there is a
difference between the means and groups (walruses have
different weights in different months) .
5. TWO WAY ANOVA:
A two-way ANOVA is designed to
assess the interrelationship of two
independent variables on a dependent
variable
compares the mean differences
between groups that have been split
on two independent variables (called
factors).
6. EXAMPLE:
You are researching which type of fertilizer and
planting density produces the greatest crop yield
in a field experiment. You assign different plots
in a field to a combination of fertilizer type (1, 2,
or 3) and planting density (1=low density,
2=high density), and measure the final crop
yield in per acre LAND at harvest time.
You can use a two-way ANOVA to find out if
fertilizer type and planting density have
an effect on average crop yield.
7. EXAMPLE:
A pharmacology research laboratory is testing
the effect of four drug candidates on the
concentration of nitric oxide (NO) in rat plasma
(n = 12). The data for the quantification of NO,
in µmol/L, is displayed below. Determine if the
treatments result in a significant change to the
concentration of NO in rat plasma. (α = 0.05)
20. INTERPRETATION OF THE RESULT
(PROBLEM 1)
WE performed the test at a significance
level (α) of 0.05. If you obtain a p-value
greater than 0.05, that means there is no
statistically significant difference between
the means due to a factor. However, in the
example shown above, we obtained a p-
value of 0.00281, which is lower than
0.05, meaning there is a statistically
significant difference (we reject H0!).
21. Since p ≤ 0.05, we have strong statistical
evidence that the factor (treatment) has
an effect (concentration of NO in rat
plasma) that is likely not due to chance
and we may reject H0. We may also state
that since p ≤ 0.05, there is a statistically
significant difference in the mean
concentrations of NO in rat plasma due
to the drug treatments (we accept H1!).