igraph
edition)For years now, authors and analysts have worked on financial data using ad-hoc tools or programming languages other than R
. So, the package FinNet
was born to provide all R
users with the ability to study financial networks with a set of tool especially designed to this purpose. Specifically, FinNet
offers both brand new tools and an interface to the almost limitless capabilities of igraph
and network
.
This vignette illustrates how to:
yahoofinancer
;After having identified the firms of interest, the package can fetch all information on them as long as yahoofinancer
is available. Otherwise, built-in data can be used:
# Check if `yahoofinancer` is installed
isTRUE(requireNamespace('yahoofinancer', quietly = TRUE))
#> [1] TRUE
# Create a list of the desired firms
data('firms_US')
There are many function in the FF
function family to rapidly build an adjacency matrix. In this step, FF.norm.ownership()
will construct a normalised-valued matrix of common ownership
# Identify common-ownership relations in a firm-firm matrix
FF <- FF.norm.ownership(firms)
A graph can be obtained easily using FF.graph()
, which include two preset aesthetics: ‘simple’ and ‘nice’
# Create a simple-looking graph
g <- FF.graph(FF, aesthetic = 'simple')
Some checks using the S3 methods implemented for financial_matrix
objects and the extension of some igraph
functions allow to verify the correctness of the graph:
# The order of the graph equals the number of rows in the FF matrix
vcount(g) == nrow(FF)
#> [1] TRUE
# The names of its vertex match the row names of the FF matrix
V(g)$name == rownames(FF)
#> [1] TRUE TRUE TRUE
The ‘nice’ defaults are more indicated for a visual inspection of the network.
# Load dataset
data('firms_BKB')
# Identify common-ownership relations in a firm-firm matrix
FF <- FF(firms_BKB, who = 'own',
ties = 'naive', Matrix = TRUE)
# Create a nice-looking graph
g <- FF.graph(FF, aesthetic = 'nice')
# Plot it
plot_igraph(g, vertex.label = NA, edge.arrow.size = .6, scale_vertex = 10)