The function
surCoin()
, starting from a data frame, generates a list (an
object of class netCoin
) containing the nodes, links, and
options resulting from the coincidence analysis. This object can be
plotted to generate an interactive graph.
For this example we will use the ess
sample data which
is loaded with the package. This data frame contains a simple random
sample of 1,000 people with a small subset of the variables from the 8th
round of the European Social Survey (ESS) in
Europe:
The most simple way to run a coincidence analysis is
to use surCoin()
including the data and a vector
(set
) with the names of the variables to be used in the
analysis. In this case we add Gender
, Age
,
Social participation
and
Political participation
:
set <- c("Social participation", "Political participation", "Gender", "Age")
essCoin <- surCoin(data = ess, variables = set)
essCoin
#>
#> Nodes(12):
#> name % variable
#> Social participation:No 60.08024 Social participation
#> Social participation:Yes 39.91976 Social participation
#> Political participation:No 72.21665 Political participation
#> Political participation:Yes 27.78335 Political participation
#> Gender:Female 53.56068 Gender
#> Gender:Male 46.43932 Gender
#> ...
#>
#> Links(24):
#> Source Target Haberman p(Z)
#> Social participation:No Political participation:No 11.755060 0.00000000
#> Social participation:No Gender:Female 1.837566 0.03321192
#> Social participation:No Age:60-69 2.053822 0.02012663
#> Social participation:No Age:70 and + 1.673124 0.04730833
#> Social participation:Yes Political participation:Yes 11.755060 0.00000000
#> Social participation:Yes Gender:Male 1.837566 0.03321192
#> ...
An interactive plot of the coincidence analysis can
be produced using the plot()
function. Note that the output
is an html page that will open in the default browser.
For binary variables we may want to represent only one
category and hide the counterpart. For instance, the variable
about social participation (Social participation
) has two
categories and we want just to represent the cases who have participated
socially:
surCoin()
allows for the use of
weights. Also different procedures can
be used to assess the strength of the coincidences, the default is
haberman
or adjusted residuals. A full list of the measures
available can be found in the function specification. In this case we
will set the weight to cweight
and ask for three different
measures: frequencies (f
), Conditional relative frequencies
(i
) and adjusted residuals (h
).
Some aspects of the output can be customised, for
example, we may want to use the argument exogenous
to
exclude the relationships amongst the categories of a variable or
supress those categories without any relation with others with the
argument degreeFilter
. In this case we will set gender
(Gender
) and age (Age
) as exogenous.
To customise the coincidence analysis you can use any of the
netCoin()
arguments. Even more you can use the addNetCoin
function with the previous essCoin
object as input, instead
of data
and variables
. For instance, we may
want to use the aesthetics color to differentiate the nodes. Each node
will take a different fill color if we set the argument
color
to the variable "name"
. In addition, we
can also establish the size of the nodes based on the relative
freqencies, to do this the argument size must equal "%"
The
variable name
in the nodes dataset refers to the name of
each node, a combination of the variable name and the category. You can
access the nodes data frame from the surCoin object:
essCoin <- addNetCoin(essCoin,
color = "variable",
size = "%")
print(essCoin$nodes[1:5,], row.names=FALSE)
plot(essCoin)
You may want to differentiate the nodes from their degree using an
aesthetics like color or shape. To do this we need to write “degree” in
the aesthetics, as the column degree
is present
automatically in the nodes dataset.
You may want to save the output of surCoin()
or
transform the object to be used in igraph.
To save the output we use the argument
dir
to set the directory where we want the html page to be
stored.