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❗ This is a read-only mirror of the CRAN R package repository. graphlayouts — Additional Layout Algorithms for Network Visualizations. Homepage: https://github.com/schochastics/graphlayoutshttps://schochastics.github.io/graphlayouts/ Report bugs for this package: https://github.com/schochastics/graphlay ...

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graphlayouts

R-CMD-check CRAN status Downloads Total Downloads Codecov test coverage Zenodo JOSS

This package implements some graph layout algorithms that are not available in igraph.

A detailed introductory tutorial for graphlayouts and ggraph can be found here.

The package implements the following algorithms:

  • Stress majorization (Paper)
  • Quadrilateral backbone layout (Paper)
  • flexible radial layouts (Paper)
  • sparse stress (Paper)
  • pivot MDS (Paper)
  • dynamic layout for longitudinal data (Paper)
  • spectral layouts (adjacency/Laplacian)
  • a simple multilevel layout
  • a layout algorithm using UMAP
  • group based centrality and focus layouts which keeps groups of nodes close in the same range on the concentric circle

Install

# dev version
remotes::install_github("schochastics/graphlayouts")

# CRAN
install.packages("graphlayouts")

Stress Majorization: Connected Network

This example is a bit of a special case since it exploits some weird issues in igraph.

library(igraph)
library(ggraph)
library(graphlayouts)

set.seed(666)
pa <- sample_pa(1000, 1, 1, directed = F)

ggraph(pa, layout = "nicely") +
    geom_edge_link0(width = 0.2, colour = "grey") +
    geom_node_point(col = "black", size = 0.3) +
    theme_graph()

ggraph(pa, layout = "stress") +
    geom_edge_link0(width = 0.2, colour = "grey") +
    geom_node_point(col = "black", size = 0.3) +
    theme_graph()

Stress Majorization: Unconnected Network

Stress majorization also works for networks with several components. It relies on a bin packing algorithm to efficiently put the components in a rectangle, rather than a circle.

set.seed(666)
g <- disjoint_union(
    sample_pa(10, directed = FALSE),
    sample_pa(20, directed = FALSE),
    sample_pa(30, directed = FALSE),
    sample_pa(40, directed = FALSE),
    sample_pa(50, directed = FALSE),
    sample_pa(60, directed = FALSE),
    sample_pa(80, directed = FALSE)
)

ggraph(g, layout = "nicely") +
    geom_edge_link0() +
    geom_node_point() +
    theme_graph()

ggraph(g, layout = "stress", bbox = 40) +
    geom_edge_link0() +
    geom_node_point() +
    theme_graph()

Backbone Layout

Backbone layouts are helpful for drawing hairballs.

set.seed(665)
# create network with a group structure
g <- sample_islands(9, 40, 0.4, 15)
g <- simplify(g)
V(g)$grp <- as.character(rep(1:9, each = 40))

ggraph(g, layout = "stress") +
    geom_edge_link0(colour = rgb(0, 0, 0, 0.5), width = 0.1) +
    geom_node_point(aes(col = grp)) +
    scale_color_brewer(palette = "Set1") +
    theme_graph() +
    theme(legend.position = "none")

The backbone layout helps to uncover potential group structures based on edge embeddedness and puts more emphasis on this structure in the layout.

bb <- layout_as_backbone(g, keep = 0.4)
E(g)$col <- FALSE
E(g)$col[bb$backbone] <- TRUE

ggraph(g, layout = "manual", x = bb$xy[, 1], y = bb$xy[, 2]) +
    geom_edge_link0(aes(col = col), width = 0.1) +
    geom_node_point(aes(col = grp)) +
    scale_color_brewer(palette = "Set1") +
    scale_edge_color_manual(values = c(rgb(0, 0, 0, 0.3), rgb(0, 0, 0, 1))) +
    theme_graph() +
    theme(legend.position = "none")

Radial Layout with Focal Node

The function layout_with_focus() creates a radial layout around a focal node. All nodes with the same distance from the focal node are on the same circle.

library(igraphdata)
library(patchwork)
data("karate")

p1 <- ggraph(karate, layout = "focus", focus = 1) +
    draw_circle(use = "focus", max.circle = 3) +
    geom_edge_link0(edge_color = "black", edge_width = 0.3) +
    geom_node_point(aes(fill = as.factor(Faction)), size = 2, shape = 21) +
    scale_fill_manual(values = c("#8B2323", "#EEAD0E")) +
    theme_graph() +
    theme(legend.position = "none") +
    coord_fixed() +
    labs(title = "Focus on Mr. Hi")

p2 <- ggraph(karate, layout = "focus", focus = 34) +
    draw_circle(use = "focus", max.circle = 4) +
    geom_edge_link0(edge_color = "black", edge_width = 0.3) +
    geom_node_point(aes(fill = as.factor(Faction)), size = 2, shape = 21) +
    scale_fill_manual(values = c("#8B2323", "#EEAD0E")) +
    theme_graph() +
    theme(legend.position = "none") +
    coord_fixed() +
    labs(title = "Focus on John A.")

p1 + p2

Radial Centrality Layout

The function layout_with_centrality creates a radial layout around the node with the highest centrality value. The further outside a node is, the more peripheral it is.

library(igraphdata)
library(patchwork)
data("karate")

bc <- betweenness(karate)
p1 <- ggraph(karate, layout = "centrality", centrality = bc, tseq = seq(0, 1, 0.15)) +
    draw_circle(use = "cent") +
    annotate_circle(bc, format = "", pos = "bottom") +
    geom_edge_link0(edge_color = "black", edge_width = 0.3) +
    geom_node_point(aes(fill = as.factor(Faction)), size = 2, shape = 21) +
    scale_fill_manual(values = c("#8B2323", "#EEAD0E")) +
    theme_graph() +
    theme(legend.position = "none") +
    coord_fixed() +
    labs(title = "betweenness centrality")


cc <- closeness(karate)
p2 <- ggraph(karate, layout = "centrality", centrality = cc, tseq = seq(0, 1, 0.2)) +
    draw_circle(use = "cent") +
    annotate_circle(cc, format = "scientific", pos = "bottom") +
    geom_edge_link0(edge_color = "black", edge_width = 0.3) +
    geom_node_point(aes(fill = as.factor(Faction)), size = 2, shape = 21) +
    scale_fill_manual(values = c("#8B2323", "#EEAD0E")) +
    theme_graph() +
    theme(legend.position = "none") +
    coord_fixed() +
    labs(title = "closeness centrality")

p1 + p2

Large graphs

graphlayouts implements two algorithms for visualizing large networks (<100k nodes). layout_with_pmds() is similar to layout_with_mds() but performs the multidimensional scaling only with a small number of pivot nodes. Usually, 50-100 are enough to obtain similar results to the full MDS.

layout_with_sparse_stress() performs stress majorization only with a small number of pivots (~50-100). The runtime performance is inferior to pivotMDS but the quality is far superior.

A comparison of runtimes and layout quality can be found in the wiki
tl;dr: both layout algorithms appear to be faster than the fastest igraph algorithm layout_with_drl().

Below are two examples of layouts generated for large graphs using layout_with_sparse_stress()

A retweet network with 18k nodes and 61k edges

A network of football players with 165K nodes and 6M edges.

dynamic layouts

layout_as_dynamic() allows you to visualize snapshots of longitudinal network data. Nodes are anchored with a reference layout and only moved slightly in each wave depending on deleted/added edges. In this way, it is easy to track down specific nodes throughout time. Use patchwork to put the individual plots next to each other.

# remotes::install_github("schochastics/networkdata")
library(networkdata)
# longitudinal dataset of friendships in a school class
data("s50")

xy <- layout_as_dynamic(s50, alpha = 0.2)
pList <- vector("list", length(s50))

for (i in seq_along(s50)) {
    pList[[i]] <- ggraph(s50[[i]], layout = "manual", x = xy[[i]][, 1], y = xy[[i]][, 2]) +
        geom_edge_link0(edge_width = 0.6, edge_colour = "grey66") +
        geom_node_point(shape = 21, aes(fill = as.factor(smoke)), size = 3) +
        geom_node_text(aes(label = 1:50), repel = T) +
        scale_fill_manual(
            values = c("forestgreen", "grey25", "firebrick"),
            labels = c("no", "occasional", "regular"),
            name = "smoking",
            guide = ifelse(i != 2, "none", "legend")
        ) +
        theme_graph() +
        theme(legend.position = "bottom") +
        labs(title = paste0("Wave ", i))
}
wrap_plots(pList)

Layout manipulation

The functions layout_mirror() and layout_rotate() can be used to manipulate an existing layout

How to reach out?

Where do I report bugs?

Simply open an issue on GitHub.

How do I contribute to the package?

If you have an idea (but no code yet), open an issue on GitHub. If you want to contribute with a specific feature and have the code ready, fork the repository, add your code, and create a pull request.

Do you need support?

The easiest way is to open an issue - this way, your question is also visible to others who may face similar problems.

Code of Conduct

Please note that the graphlayouts project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.

About

❗ This is a read-only mirror of the CRAN R package repository. graphlayouts — Additional Layout Algorithms for Network Visualizations. Homepage: https://github.com/schochastics/graphlayoutshttps://schochastics.github.io/graphlayouts/ Report bugs for this package: https://github.com/schochastics/graphlay ...

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