| bayesian_causens | Bayesian parametric sensitivity analysis for causal inference |
| causens_monte_carlo | Monte Carlo sensitivity analysis for causal effects |
| causens_sf | Bayesian Estimation of ATE Subject to Unmeasured Confounding |
| create_jags_model | Create an JAGS model for Bayesian sensitivity analysis |
| gData_U_binary_Y_binary | Generate data with a binary unmeasured confounder and binary outcome |
| gData_U_binary_Y_cont | Generate data with a binary unmeasured confounder and continuous outcome |
| gData_U_cont_Y_binary | Generate data with a continuous unmeasured confounder and a binary outcome |
| gData_U_cont_Y_cont | Generate data with a continuous unmeasured confounder and continuous outcome |
| plot_causens | Plot ATE with respect to sensitivity function value when it is constant, i.e. c(1, e) = c1 and c(0, e) = c0. |
| process_model_formula | Process model formula |
| sf | Calculate sensitivity of treatment effect estimate to unmeasured confounding |
| simulate_data | Generate data with unmeasured confounder |
| summary.bayesian_causens | Summarize the results of a causal sensitivity analysis via Bayesian modelling of an unmeasured confounder. |
| summary.causens_sf | Summarize the results of a causal sensitivity analysis via sensitivity function. |
| summary.monte_carlo_causens | Summarize the results of a causal sensitivity analysis via the Monte Carlo method. |