## ----echo=FALSE, results="hide", message=FALSE, warning=FALSE----------------- knitr::opts_chunk$set( echo = TRUE, message = FALSE, tidy = TRUE, warning = FALSE, fig.width = 8, fig.height = 6, fig.align = "center" ) ## ----------------------------------------------------------------------------- library(bitriad) ## ----------------------------------------------------------------------------- data(women_clique) as_incidence_matrix(women_clique) ## ----echo=FALSE, fig.height=5------------------------------------------------- women_clique <- prettify_an(women_clique) V(women_clique)$label <- c(LETTERS[1:5], 1:5) V(women_clique)$label.color <- "white" set.seed(77) plot( women_clique, layout = layout_with_fr(women_clique, niter = 200) ) ## ----------------------------------------------------------------------------- women_clique_proj <- actor_projection(women_clique) ( tc <- triad_census(women_clique_proj) ) ## ----------------------------------------------------------------------------- ( antc <- triad_census(women_clique) ) ## ----------------------------------------------------------------------------- antc_proj <- project_census(antc) antc_proj$binary ## ----------------------------------------------------------------------------- cbind( tc, antc_proj$simple, project_census(antc_proj$binary)$simple ) ## ----------------------------------------------------------------------------- ( C <- unname(3 * tc[4] / (tc[3] + 3 * tc[4])) ) ## ----------------------------------------------------------------------------- ( C_vec <- c( C = triad_closure_from_census(antc, scheme = "full", measure = "classical"), OpsahlC = triad_closure_from_census(antc, scheme = "full", measure = "opsahl"), exclC = triad_closure_from_census(antc, scheme = "full", measure = "exclusive") ) ) ## ----------------------------------------------------------------------------- stc <- antc_proj$binary 3 * sum(stc[4, ]) / (sum(stc[3, ]) + 3 * sum(stc[4, ])) ## ----------------------------------------------------------------------------- C_local <- transitivity(women_clique_proj, type = "local") names(C_local) <- V(women_clique_proj)$name C_local ## ----------------------------------------------------------------------------- ( exclWedges <- triad_closure_exclusive(women_clique, type = "raw") ) ## ----------------------------------------------------------------------------- sum(exclWedges[, 2]) / sum(exclWedges[, 1]) # global exclWedges[, 2] / exclWedges[, 1] # local ## ----------------------------------------------------------------------------- C_local_dat <- cbind( C = C_local, OpsahlC = triad_closure_opsahl(women_clique, type = "local"), exclC = triad_closure_exclusive(women_clique, type = "local") ) rownames(C_local_dat) <- V(women_clique_proj)$name C_local_dat ## ----fig.height=5------------------------------------------------------------- ddc <- data.frame( k = degree(women_clique_proj), C = transitivity(women_clique_proj, type = "local") ) print(ddc) plot( aggregate(ddc$C, by = list(ddc$k), FUN = mean), pch = 19, type = "b", main = "Degree-dependent local clustering", xlab = "Degree", ylab = "Mean conditional local clustering coefficient" ) ## ----fig.height=6------------------------------------------------------------- data(women_group) women_group <- prettify_an(women_group) V(women_group)$label <- substr( V(women_group)$name, 1, ifelse(V(women_group)$type, 5, 2) ) V(women_group)$label.color <- "white" set.seed(2) plot(women_group, layout = layout_as_bipartite(women_group)) ## ----fig.height=5------------------------------------------------------------- women_group_proj <- actor_projection(women_group) ( ddc2 <- data.frame( k = degree(women_group_proj), C = transitivity(women_group_proj, type = "local") ) ) plot( aggregate(ddc2$C, by = list(k = ddc2$k), FUN = mean), pch = 19, type = "b", main = "Degree-dependent local clustering", xlab = "Degree", ylab = "Mean conditional local clustering coefficient" ) ## ----fig.height=5------------------------------------------------------------- women_group_wedges <- triad_closure_opsahl(women_group, type = "raw") women_group_wedges <- cbind( women_group_wedges, women_group_wedges[, 2] / women_group_wedges[, 1] ) plot( aggregate( women_group_wedges[, 3], by = list(women_group_wedges[, 1]), FUN = mean ), pch = 19, type = "b", main = "Wedge-dependent local clustering (Opsahl)", xlab = "Wedges", ylab = "Mean conditional local clustering coefficient" ) ## ----fig.height=5------------------------------------------------------------- women_group_wedges <- triad_closure_exclusive(women_group, type = "raw") women_group_wedges <- cbind( women_group_wedges, C = women_group_wedges[, 2] / women_group_wedges[, 1] ) plot( aggregate( women_group_wedges[, 3], by = list(women_group_wedges[, 1]), FUN = mean ), pch = 19, type = "b", main = "Wedge-dependent local clustering (exclusive)", xlab = "Wedges", ylab = "Mean conditional local clustering coefficient" )