| check_and_fix_chains | Check Assumption and Fix Label Switching if Assumption is Broken for a List of MCMC Samples |
| check_and_fix_chains_2stage | Check Assumption and Fix Label Switching if Assumption is Broken for a List of MCMC Samples |
| COMBO_data | Generate Data to use in COMBO Functions |
| COMBO_data_2stage | Generate data to use in two-stage COMBO Functions |
| COMBO_EM | EM-Algorithm Estimation of the Binary Outcome Misclassification Model |
| COMBO_EM_2stage | EM-Algorithm Estimation of the Two-Stage Binary Outcome Misclassification Model |
| COMBO_EM_data | Test data for the COMBO_EM function |
| COMBO_MCMC | MCMC Estimation of the Binary Outcome Misclassification Model |
| COMBO_MCMC_2stage | MCMC Estimation of the Two-Stage Binary Outcome Misclassification Model |
| em_function | EM-Algorithm Function for Estimation of the Misclassification Model |
| em_function_2stage | EM-Algorithm Function for Estimation of the Two-Stage Misclassification Model |
| expit | Expit function |
| jags_picker | Set up a Binary Outcome Misclassification 'jags.model' Object for a Given Prior |
| jags_picker_2stage | Set up a Two-Stage Binary Outcome Misclassification 'jags.model' Object for a Given Prior |
| label_switch | Fix Label Switching in MCMC Results from a Binary Outcome Misclassification Model |
| label_switch_2stage | Fix Label Switching in MCMC Results from a Binary Outcome Misclassification Model |
| loglik | Expected Complete Data Log-Likelihood Function for Estimation of the Misclassification Model |
| loglik_2stage | Expected Complete Data Log-Likelihood Function for Estimation of the Two-Stage Misclassification Model |
| LSAC_data | Example data from The Law School Admissions Council's (LSAC) National Bar Passage Study (Linda Wightman, 1998) |
| mean_pistarjj_compute | Compute the Mean Conditional Probability of Correct Classification, by True Outcome Across all Subjects |
| misclassification_prob | Compute Conditional Probability of Each Observed Outcome Given Each True Outcome, for Every Subject |
| misclassification_prob2 | Compute Conditional Probability of Each Second-Stage Observed Outcome Given Each True Outcome and First-Stage Observed Outcome, for Every Subject |
| model_picker | Select a Binary Outcome Misclassification Model for a Given Prior |
| model_picker_2stage | Select a Two-Stage Binary Outcome Misclassification Model for a Given Prior |
| naive_jags_picker | Set up a Naive Logistic Regression 'jags.model' Object for a Given Prior |
| naive_jags_picker_2stage | Set up a Naive Two-Stage Regression 'jags.model' Object for a Given Prior |
| naive_loglik_2stage | Observed Data Log-Likelihood Function for Estimation of the Naive Two-Stage Misclassification Model |
| naive_model_picker | Select a Logisitic Regression Model for a Given Prior |
| naive_model_picker_2stage | Select a Naive Two-Stage Regression Model for a Given Prior |
| perfect_sensitivity_EM | EM-Algorithm Estimation of the Binary Outcome Misclassification Model while Assuming Perfect Sensitivity |
| pistar_by_chain | Compute the Mean Conditional Probability of Correct Classification, by True Outcome Across all Subjects for each MCMC Chain |
| pistar_by_chain_2stage | Compute the Mean Conditional Probability of Correct Classification, by True Outcome Across all Subjects for each MCMC Chain for a 2-stage model |
| pistar_compute | Compute Conditional Probability of Each Observed Outcome Given Each True Outcome, for Every Subject |
| pistar_compute_for_chains | Compute Conditional Probability of Each Observed Outcome Given Each True Outcome for a given MCMC Chain, for Every Subject |
| pistar_compute_for_chains_2stage | Compute Conditional Probability of Each Observed Outcome Given Each True Outcome for a given MCMC Chain, for Every Subject for 2-stage models |
| pitilde_by_chain | Compute the Mean Conditional Probability of Second-Stage Correct Classification, by First-Stage and True Outcome Across all Subjects for each MCMC Chain |
| pitilde_compute | Compute Conditional Probability of Each Second-Stage Observed Outcome Given Each True Outcome and First-Stage Observed Outcome, for Every Subject |
| pitilde_compute_for_chains | Compute Conditional Probability of Each Observed Outcome Given Each True Outcome for a given MCMC Chain, for Every Subject |
| pi_compute | Compute Probability of Each True Outcome, for Every Subject |
| q_beta_f | M-Step Expected Log-Likelihood with respect to Beta |
| q_delta_f | M-Step Expected Log-Likelihood with respect to Delta |
| q_gamma_f | M-Step Expected Log-Likelihood with respect to Gamma |
| sum_every_n | Sum Every "n"th Element |
| sum_every_n1 | Sum Every "n"th Element, then add 1 |
| true_classification_prob | Compute Probability of Each True Outcome, for Every Subject |
| VPRAI_synthetic_data | Synthetic example data of pretrial failure risk factors and outcomes, VPRAI recommendations, and judge decisions |
| w_j | Compute E-step for Binary Outcome Misclassification Model Estimated With the EM-Algorithm |
| w_j_2stage | Compute E-step for Two-Stage Binary Outcome Misclassification Model Estimated With the EM-Algorithm |