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pcalg (version 2.0-3)

corGraph: Computing the correlation graph

Description

Computes the correlation graph. This is the graph in which an edge is drawn between node i and node j, if the null hypothesis Correlation between $X_i$ and $X_j$ is zero can be rejected at the given significance level $\alpha (alpha)$.

Usage

corGraph(dm, alpha=0.05, Cmethod="pearson")

Arguments

dm
Numeric matrix with rows as samples and columns as variables.
alpha
Significance level for correlation test (numeric)
Cmethod
A character string indicating which correlation coefficient is to be used for the test. One of "pearson","kendall", or "spearman", can be abbreviated. (string)

Value

  • Undirected correlation graph (graph object)

Examples

Run this code
## create correlated samples
x1 <- rnorm(100)
x2 <- rnorm(100)
mat <- cbind(x1,x2, x3 = x1+x2)

if (require(Rgraphviz)) {
## ``analyze the data''
(g <- corGraph(mat)) # a 'graphNEL' graph, undirected
plot(g) # ==> (1) and (2) are each linked to (3)

## use different significance level and different method
(g2 <- corGraph(mat, alpha=0.01, Cmethod="kendall"))
plot(g2) ## same edges as 'g'
}

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