## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 6, fig.height = 4 ) set.seed(2026) ## ----setup-------------------------------------------------------------------- library(amorem) ## ----data--------------------------------------------------------------------- data("dist_matrix", package = "amorem") states <- rownames(dist_matrix) n_states <- length(states) # Convert metres → log-units, scaled to a usable range. dist_log <- log(dist_matrix / 1e5 + 1) ## ----simulate----------------------------------------------------------------- true_dist_effect <- sin(-dist_log / 1.5) cc <- simulate_relational_events( n_events = 600, senders = states, receivers = states, contribution_logits = true_dist_effect, baseline_rate = 1, allow_loops = FALSE, n_controls = 1, endogenous_stats = "reciprocity_exp_decay", endogenous_effects = c(reciprocity_exp_decay = 0.4), half_life = 2, risk = "remove" ) nrow(cc) head(cc) ## ----unique-check------------------------------------------------------------- events_only <- cc[cc$event == 1L, ] nrow(events_only) any(duplicated(paste(events_only$sender, events_only$receiver))) ## ----recovery, fig.alt = "recovered smooth distance effect"------------------- get_dist <- function(s, r) { dist_log[cbind(match(s, states), match(r, states))] } cc$dist_val <- mapply(get_dist, cc$sender, cc$receiver) cases <- cc[cc$event == 1L, ] controls <- cc[cc$event == 0L, ] cases <- cases[order(cases$stratum), ] controls <- controls[order(controls$stratum), ] fit_df <- data.frame( y = 1, delta_dist = cases$dist_val - controls$dist_val, delta_r = cases$reciprocity_exp_decay - controls$reciprocity_exp_decay ) if (requireNamespace("mgcv", quietly = TRUE)) { library(mgcv) fit <- gam(y ~ s(delta_dist) + delta_r - 1, family = binomial, data = fit_df) summary(fit) x_grid <- seq(min(fit_df$delta_dist), max(fit_df$delta_dist), length.out = 200) pred <- predict(fit, newdata = data.frame(delta_dist = x_grid, delta_r = 0), type = "link") plot(x_grid, pred, type = "l", lwd = 2, xlab = expression(Delta ~ "log-distance"), ylab = "estimated effect", main = "GAM smooth for distance (event - control)") abline(h = 0, lty = 2, col = "grey60") }