| source("install_and_load_INLA.R") |
|
|
| |
| kappa = 1 |
| phi_1 = c(1, 1.25) |
|
|
| WALS <- read_csv("data/complexity_data_WALS.csv") %>% |
| dplyr::select("Name" = lang, roundComp, logpop2, "ISO_639" = silCode) %>% |
| dplyr::mutate(ISO_639 = str_to_lower(ISO_639)) %>% |
| inner_join(read_csv("output_tables/WALS_high_coverage.csv"), |
| by = c("ISO_639")) |
|
|
| min_val <- min(WALS$roundComp) |
| max_val <- max(WALS$roundComp) |
|
|
| |
| WALS$roundComp <- (WALS$roundComp - min_val) / (max_val - min_val) |
|
|
| pop_file_fn <- |
| "data_wrangling/ethnologue_pop_SM_morph_compl_reanalysis.tsv" |
| L1 <- |
| read_tsv(pop_file_fn, show_col_types = F) %>% dplyr::select(ISO_639, L1_log10_scaled) |
|
|
| glottolog_df <- |
| read_tsv("data_wrangling/glottolog_cldf_wide_df.tsv", col_types = cols()) %>% |
| dplyr::select( |
| Glottocode, |
| Name, |
| Language_ID, |
| "ISO_639" = ISO639P3code, |
| Language_level_ID, |
| level, |
| Family_ID, |
| Longitude, |
| Latitude |
| ) %>% |
| mutate(Language_level_ID = if_else(is.na(Language_level_ID), Glottocode, Language_level_ID)) %>% |
| mutate(Family_ID = ifelse(is.na(Family_ID), Language_level_ID, Family_ID)) %>% |
| dplyr::select( |
| Glottocode, |
| Name, |
| Language_ID, |
| ISO_639, |
| Language_level_ID, |
| level, |
| Family_ID, |
| Longitude, |
| Latitude |
| ) |
|
|
| WALS_df <- WALS %>% |
| inner_join(L1, |
| by = c("ISO_639")) %>% |
| inner_join(glottolog_df, by = "ISO_639") %>% |
| filter(!is.na(Latitude),!is.na(Longitude)) %>% |
| dplyr::select(Language_ID = Glottocode, |
| Name, |
| roundComp, |
| ISO_639, |
| L1_log10_scaled, |
| Longitude, |
| Latitude) |
|
|
| |
| WALS_df$Latitude <- jitter(WALS_df$Latitude, amount = 0.001) |
| WALS_df$Longitude <- jitter(WALS_df$Longitude, amount = 0.001) |
|
|
| tree <- read.tree(file.path("data_wrangling/wrangled.tree")) |
|
|
| |
| WALS_df <- WALS_df[WALS_df$Language_ID %in% tree$tip.label, ] |
| WALS_df <- WALS_df[!duplicated(WALS_df$Language_ID),] |
| tree <- keep.tip(tree, WALS_df$Language_ID) |
|
|
| x <- |
| assert_that(all(tree$tip.label %in% WALS_df$Language_ID), msg = "The data and phylogeny taxa do not match") |
|
|
| |
| tree_scaled <- tree |
|
|
| tree_vcv = vcv.phylo(tree_scaled) |
| typical_phylogenetic_variance = exp(mean(log(diag(tree_vcv)))) |
|
|
| |
| tree_scaled$edge.length <- |
| tree_scaled$edge.length / typical_phylogenetic_variance |
| phylo_prec_mat <- MCMCglmm::inverseA(tree_scaled, |
| nodes = "ALL", |
| scale = FALSE)$Ainv |
|
|
| WALS_df = WALS_df[order(match(WALS_df$Language_ID, rownames(phylo_prec_mat))),] |
|
|
| |
| |
| spatial_covar_mat_1 = varcov.spatial(WALS_df[, c("Longitude", "Latitude")], |
| cov.pars = phi_1, kappa = kappa)$varcov |
| |
| typical_variance_spatial_1 = exp(mean(log(diag( |
| spatial_covar_mat_1 |
| )))) |
| spatial_cov_std_1 = spatial_covar_mat_1 / typical_variance_spatial_1 |
| spatial_prec_mat_1 = solve(spatial_cov_std_1) |
| dimnames(spatial_prec_mat_1) = list(WALS_df$Language_ID, WALS_df$Language_ID) |
|
|
| |
| phy_id <- match(tree$tip.label, rownames(phylo_prec_mat)) |
| if (length(phy_id) != nrow(WALS_df)) { |
| stop("The number of phylogenetic IDs does not match the number of rows in WALS_df.") |
| } |
|
|
| WALS_df$phy_id <- phy_id |
|
|
| |
| WALS_df$sp_id = 1:nrow(spatial_prec_mat_1) |
|
|
|
|
| formula <- as.formula( |
| paste( |
| "roundComp ~", |
| "L1_log10_scaled +", |
| "f(phy_id, model = 'generic0', Cmatrix = phylo_prec_mat, |
| constr = TRUE, hyper = pcprior_hyper) + |
| f(sp_id, model = 'generic0', Cmatrix = spatial_prec_mat_1, |
| constr = TRUE, hyper = pcprior_hyper)" |
| ) |
| ) |
|
|
| result <- inla( |
| formula, |
| family = "gaussian", |
| control.family = list(hyper = pcprior_hyper), |
| data = WALS_df, |
| control.compute = list(waic = TRUE) |
| ) |
| summary(result) |
|
|
| save(result, file = "output_models/model_WALS_high_coverage.RData") |
|
|
| |
|
|
| social_effects_controlled_coverage <- |
| c( |
| "morphological complexity ~ L1 + phylogenetic effect + spatial effect", |
| round( |
| c( |
| result$summary.fixed[2, ]$`0.025quant`, |
| result$summary.fixed[2, ]$`0.5quant`, |
| result$summary.fixed[2, ]$`0.975quant`, |
| nrow(WALS_df) |
| ), |
| 2 |
| ), |
| "35%" |
| ) |
|
|
| save(social_effects_controlled_coverage, file = "output_models/social_effects_controlled.RData") |
|
|
| load("output_models/social_effects_uncontrolled.RData") |
| load("output_models/social_effects_controlled.RData") |
| load("output_models/social_effects_controlled_coverage.RData") |
|
|
| effects_morph_comp <- |
| as.data.frame( |
| rbind( |
| social_effects_uncontrolled, |
| social_effects_controlled, |
| social_effects_controlled_coverage |
| ) |
| ) |
| colnames(effects_morph_comp) <- |
| c("model", |
| "2.5%", |
| "50%", |
| "97.5%", |
| "sample size", |
| "feature coverage threshold") |
|
|
| rownames(effects_morph_comp) <- NULL |
|
|
| effects_morph_comp %>% |
| write_csv("output_tables/WALS_morph_compl_effects.csv") |
|
|