This layout is optimised for drawing small-world types of graphs often found in social networks, where distinct groups are still highly connected to the remaining graph. Typical layouts struggle with this as they attempt to minimise the edge length of all edges equally. The backbone layout is based on weighing edges based on how well they hold together communities. The end result is that communities tend to stick together despite high interconnectivity.
layout_tbl_graph_backbone(graph, keep = 0.2, circular = FALSE)
A data.frame with the columns x
, y
, circular
as
well as any information stored as node variables in the tbl_graph object.
Further an edge attribute called backbone
is added giving whether the edge
was selected as backbone.
A tbl_graph object
The fraction of edges to use for creating the backbone
ignored
The underlying algorithm is implemented in the graphlayouts package by David Schoch
Nocaj, A., Ortmann, M., & Brandes, U. (2015). Untangling the hairballs of multi-centered, small-world online social media networks. Journal of Graph Algorithms and Applications: JGAA, 19(2), 595-618.
Other layout_tbl_graph_*:
layout_tbl_graph_auto()
,
layout_tbl_graph_centrality()
,
layout_tbl_graph_circlepack()
,
layout_tbl_graph_dendrogram()
,
layout_tbl_graph_eigen()
,
layout_tbl_graph_fabric()
,
layout_tbl_graph_focus()
,
layout_tbl_graph_hive()
,
layout_tbl_graph_igraph()
,
layout_tbl_graph_linear()
,
layout_tbl_graph_manual()
,
layout_tbl_graph_matrix()
,
layout_tbl_graph_partition()
,
layout_tbl_graph_pmds()
,
layout_tbl_graph_stress()
,
layout_tbl_graph_treemap()
,
layout_tbl_graph_unrooted()