## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup-------------------------------------------------------------------- library(seine) data(elec_1968) spec = ei_spec( elec_1968, predictors = vap_white:vap_other, outcome = pres_dem_hum:pres_abs, total = pres_total, covariates = c(state, pop_city:pop_rural, farm:educ_coll, inc_00_03k:inc_25_99k), preproc = function(x) { x = model.matrix(~ 0 + ., x) # convert factors to dummies bases::b_bart(x, trees = 250) } ) ## ----------------------------------------------------------------------------- m = ei_ridge(spec) rr = ei_riesz(spec, penalty = m$penalty) est = ei_est(m, rr, spec, contrast = list(predictor = c(1, -1, 0)), conf_level = FALSE) print(est) ## ----------------------------------------------------------------------------- ei_sens(est, c_outcome = 0.5, c_predictor = 0.2) ## ----------------------------------------------------------------------------- ei_sens(est, c_outcome = 1, bias_bound = 0.05) ## ----------------------------------------------------------------------------- bench = ei_bench(spec, contrast = list(predictor = c(1, -1, 0))) subset(bench, outcome == "pres_rep_nix") ## ----include=FALSE------------------------------------------------------------ fmt_pp = \(x) paste0(format(100*x, digits=2), "pp") est_pt = subset(est, outcome=="pres_rep_nix")$estimate bb = subset(bench, covariate == "state" & outcome == "pres_rep_nix") est_bias = subset(ei_sens(est, bb$c_outcome, bb$c_predictor), outcome == "pres_rep_nix")$bias_bound est_max = max(abs(bench$est_chg)) ## ----fig.height = 7, fig.alt = "Bias contour plot for the racially polarized Nixon vote"---- sens = ei_sens(est) # the default evaluates on a grid of parameters plot(sens, "pres_rep_nix", bench = bench, bounds = c(-1, 1)) ## ----------------------------------------------------------------------------- ei_sens_rv(est, bias_bound = estimate)