The
ANOVA
process fits a linear
model
to sequential rows of
observations
of a
tall
data set. The data are assumed to be from a pre-normalized response
variable
and values are typically log
2
transformed intensities. The process fits an
ANOVA
model to data from each row (or groups of rows) and creates numerous output displays. You can test hypotheses on all possible effects of each of the variables and their interactions separately.
The second data set is the
Experimental Design Data Set (EDDS)
. This required data set tells how the experiment was performed, providing information about the columns in the input data set. Note that one column in the EDDS must be named
ColumnName
and the values contained in this column must exactly match the column names in the input data set. Two other columns in this data set,
Array
, and
Experiment
, correspond to an
index variable
and the one-way experimental variable, respectively.
An
Annotation Data Set
can also be specified. This data set contains information, such as gene identity,
accession numbers
, chromosomal location, and so on, for each of the rows in the input data set. This data set is also in the
tall
format; where each row corresponds to a different gene.
The output generated by this process is summarized in a Tabbed report. Refer to the
ANOVA
output documentation for detailed descriptions and guides to interpreting your results.