Fit Models to Two-Way Tables with Correlated Ordered Response Categories


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Documentation for package ‘ordinalTables’ version 1.0.0.3

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A B C D E F G H I K L M N O P R S T U V W

-- A --

Agresti_bisection Solves equation Agresti_f() = 0 for delta by method of bisection..
Agresti_compute_lambda Computes value of lambda parameter
Agresti_compute_pi Computes the matrix pi of model-based proportions
Agresti_create_design_matrix Creates the design matrix for Agresti's simple diagonal quasi-symmetry model.
Agresti_equation_1 First equation in section 3. Solved for kappa.
Agresti_equation_2 Second equation in section 3. Solved for pi_margin.
Agresti_equation_3 Third equation in section 3. Solved for lambda
Agresti_extract_delta Extracts the quasi-symmetry information from the result provided.
Agresti_f Function value for first equation in section 3.
Agresti_kappa_agreement Fits Agresti's agreement model that includes kappa as a parameter.
Agresti_simple_diagonals_parameter_quasi_symmetry Agresti's simple diganal quasi-symmetry model.
Agresti_starting_values Computes staring values for marginal pi.
Agresti_weighted_tau Computes weighted tau from Section 2.1. Agresti, A. (1983). Testing marginal homogeneity for ordinal categorical variables. Biometrics, 39(2), 505-510.
Agresti_w_diff Computes the weighted statistics listed in section 2.3.

-- B --

Bhapkar_marginal_homogeneity Bhapkar's (1979) test for marginal homogeneity
Bhapkar_quasi_symmetry Bhapkar's 1979 test for quasi-symmetry.
Bowker_symmetry Computes Bowker's test of symmetry.
budget_actual Participation in household budgeting by psychiatric patients. Rows are ratings by patient, columns are ratings by relative. 1 - not at all 2 - doing some 3 - doing regularly
budget_expected Ratings of expected participation in household budgeting by psychiatric patients. Rows are ratings by patient, columns are ratings by relative. 1 - not at all 2 - doing some 3 - doing regularly

-- C --

Clayton_marginal_location Fits the tests comparing locations of the margins of a two-way table.
Clayton_stratified_marginal_location Clayton's stratified version of the marginal location comparison.
Clayton_summarize Computes summary, cumulative proportions up to index provided
Clayton_summarize_stratified Analysis stratified by column variable j.
Clayton_two_way_association Clayton's stratified measure of association
Cliff_as_d_matrix Converts two vectors containing scores and integer frequencies (cell counts) into a d-matrix
Cliff_compute_d Computes between groups dominance matrix "d".
Cliff_counts_2 Generates counts from table frequencies for 2 category items
Cliff_counts_3 Generates counts from table frequencies for 3 category items
Cliff_counts_4 Generates counts from table frequencies for 4 category items
Cliff_counts_5 Generates counts from table frequencies for 5 category items
Cliff_counts_6 Generates counts from table frequencies for 6 category items
Cliff_dependent Computes Cliff's dependent d-statistics based on a dominance matrix.
Cliff_dependent_compute_cov Computes sum term in covariance db-dw for weighted dominance matrix.
Cliff_dependent_compute_cov_from_d Compute the sum in the covariance of db+dw
Cliff_dependent_compute_from_matrix Computes Cliff's dependent d-statistics based on a dominance matrix.
Cliff_dependent_compute_from_table Computes Cliff's dependent d-statistics based on a table of frequency counts.
Cliff_dependent_compute_paired_d Computes Cliff's dependent d-statistics based on cell frequencies.
Cliff_independent Computes the independent groups d-statistic comparing the two vectors provided.
Cliff_independent_from_matrix Computes d-statistic from dominance matrix provided.
Cliff_independent_from_table Computes independent group's d-statistic from the matrix of frequencies provided.
Cliff_independent_weighted Computes d-statistic based on scores and integer weights(frequencies) for each group.
Cliff_weighted_d_matrix Computes weighted version of dominance matrix "d"
coal_g Degree of disease measured at two points in time for mine workers.
constant_of_integration Computes the constant of integration of a multinomial sample.

-- D --

depression Ratings of severity of patient's depression by two therapists.
dogs Dehydration in dogs data set.
dreams Severity of disturbing dreams in adolescent boys, measured at two ages..
dumping Occurrence of side effects after gastro-intestinal surgery.

-- E --

esophageal_cancer Ratings of number of hot drinks consumed by cases with cancer of the esophagus, compared with control subjects.
expand Converts weighted (x, w) pairs into unweighted data by replicating x[i] w[i] times
expit Computes the "expit" function - inverse of logit.

-- F --

family_income Family income for two years from US census.

-- G --

gender_vision Ratings of visual acuity for men and women employed at the Royal Ordinance factories, 1943-1946.
Goodman_constrained_diagonals_parameter_symmetry Fits the model where some of the delta parameters are constrained to be equal to one another.
Goodman_diagonals_parameter_symmetry Fit's Goodman's diagonals parameter symmetry model.
Goodman_fixed_parameter Fits the model with given parameters fixed to specific values.
Goodman_ml Performs ML estimation of the model.
Goodman_model_i Fits Goodman's (1979) Model I
Goodman_model_ii Fits Goodman's (1979) Model II
Goodman_model_ii_star Fits Goodman's (1979) model II*, where row and column effects are equal.
Goodman_model_i_star Fits Goodman's (1979) Model I*
Goodman_null_association Fits Goodman's L. A. (1979) Simple Models for the Analysis of Association in Cross-Classifications Having Ordered Categories
Goodman_pi Computes the model-based probability for cell i, j
Goodman_pi_matrix Computes the full matrix of model-based cell probabilities.
Goodman_symmetric_association_model Fits the symmetric association model from Goodman (1979). Note the model is a reparameterized version of the quasi-symmetry model, so the quasi-symmetry model has the same fit indices.
Goodman_uniform_association Fits Goodman's (1979) uniform association model

-- H --

handle_max_i_i Case where j == r, i == k == k2
handle_max_i_k Case where j == r, i != k, i == k2
handle_max_k_k2 Case where j == r, i != k && i != k2
handle_one_maximum Case where pi[i, r] with k and k2
handle_tied_below_maximum Case where i == j, i < r, j < r
handle_tied_maximum Case where pi[r, r] with k and k2
handle_untied_below_maximum Case where i != j, i < r && j < r
homicide_black_black Data about charges of homicide in the state of Florida.
homicide_black_white Data about charges of homicide in the state of Florida.
homicide_white_black Data about charges of homicide in the state of Florida.
homicide_white_white Data about charges of homicide in the state of Florida.
hypothalamus_1 Measures of men's hypothalamus taken from cadavers. First data set.
hypothalamus_2 Measures of men's hypothalamus taken from cadavers. Second data set.

-- I --

interference_12 Measures of interference in memory recall study.
interference_control_1 Measures of interference in memory recall study.
interference_control_2 Measures of interference in memory recall study.
Ireland_marginal_homogeneity Fits marginal homogeneity model
Ireland_mdis Computes the MDIS between the two matrices provided.
Ireland_normalize_for_truncation Renormalize counts to account for truncation of diagonal
Ireland_quasi_symmetry Fit for quasi-symmetry model. Obtained by subtraction, so no model-based probabilities.
Ireland_quasi_symmetry_model Fitss the quasi-symmetry model.
Ireland_symmetry Fits symmetry model.
is_invertible Tests whether a square matrix is invertible (non singular)
is_missing_or_infinite Determines if its argument is not a valid number.

-- K --

kappa Computes Cohen's 1960 kappa coefficient

-- L --

likelihood_ratio_chisq Computes the likelihood ratio G^2 measure of fit.
loadRData Function to load a data set written out using save().
logit Computes the log-odds (logit) for the value provided
log_likelihood Computes the multinomial log(likelihood).
log_linear_add_all_diagonals Adds indicator variables for the diagonal cells in table n.
log_linear_append_column Appends a column to an existing design matrix.
log_linear_create_coefficient_names Creates missing column names
log_linear_create_linear_by_linear Creates a vector containing the linear-by-linear vector.
log_Linear_create_log_n Computes the logs of the cell frequencies.
log_linear_equal_weight_agreement_design Creates design matrix for model with main effects and a single agreement parameter delta.
log_linear_fit Fits a log-linear model to the data provided, using the design matrix provided. Names for the effects will be "rows1", "cols1" etc. If there are remaining entries, they can be specified as the "effect_names" character vector. This function is a wrapper around a call to glm() that handles some of the details of the call and packages the output in a more convenient form.
log_linear_main_effect_design Design matrix for baseline independence model with main effects for rows and columns.
log_linear_matrix_to_vector Converts a matrix of data into a vector suitable for use in analysis with the design matrices created. Unlike simply calling vector() on the matrix the resulting vector is organized by rows, then columns. This order corresponds to the order in the design matrix.
log_linear_quasi_symmetry_model_design Creates the design matrix for a quasi-symmetry design
log_linear_remove_column Removes a column from an existing design matrix.
log_linear_symmetry_design Creates design matrix for symmetry model.

-- M --

McCullagh_compute_condition Compute the linear constraint on psi elements for identifiablity.
McCullagh_compute_cumulatives Computes the model-based cumulative probability matrices pij and qij
McCullagh_compute_cumulative_sums Computes cumulative sums for rows,
McCullagh_compute_c_plus Computes sums c+ used in maximizing the log(likelihod)
McCullagh_compute_df Computes the degrees of freedom for the model
McCullagh_compute_gamma Computes gamma from x and beta
McCullagh_compute_gamma_from_phi Computes value of gamma from phi. Inverse of usual computation.
McCullagh_compute_gamma_plus_1_from_phi Computes value of gamma[j + 1] from phi.
McCullagh_compute_generalized_cumulatives Coompute the model-based cumulative probabilities pij and qij.
McCullagh_compute_generalized_pi Cpompute matrix pi under generalized model.
McCullagh_compute_lambda Computes lambda, log of cumulative odds.
McCullagh_compute_log_l Computes the log(likelihood) for the general nonlinear model.
McCullagh_compute_Nij Compute the observed sums Nij
McCullagh_compute_omega Compute the value of the Lagrange multiplier for the constraint on psi.
McCullagh_compute_phi Computes phi based on gamma
McCullagh_compute_phi_matrix Compute matrix of model-based logits
McCullagh_compute_pi Compute the regular (non-cumulative) model-based pi values
McCullagh_compute_pi_from_beta Computes matrix of p-values pi based on x and current value of beta.
McCullagh_compute_pi_from_gamma Compute the cell probabilities pi from gamma.
McCullagh_compute_regression_weights Computes regression weights w; R_dot_j * (N - R_dot_j[j]) * (n_do_j[j] a= na_dot_j[j+ 1] )
McCullagh_compute_s_plus Compute sums too use in maximizing log(likelihood)
McCullagh_compute_update Compute the Newton-Raphson update.
McCullagh_compute_z Computes Z, where z is w * lambda.
McCullagh_conditional_symmetry Fits the McCullagh (1978) conditional-symmetry model.
McCullagh_conditional_symmetry_compute_s Computes sums used in maximizing theta.
McCullagh_conditional_symmetry_initialize_phi Initializes symmetry matrix phi
McCullagh_conditional_symmetry_maximize_phi Maximizes log(likelihood) wrt phi.
McCullagh_conditional_symmetry_maximize_theta Maximizes the log(likelihood) wrt theta.
McCullagh_conditional_symmetry_pi Computes model-based proportions.
McCullagh_derivative_condition_wrt_psi Derivative of the condition wrt psi[i, j].
McCullagh_derivative_gamma_plus_1_wrt_phi Derivative of gamma j + 1 wrt phi.
McCullagh_derivative_gamma_wrt_phi Derivative of gamma wrt phi.
McCullagh_derivative_gamma_wrt_y Derivative of y wrt gamma.
McCullagh_derivative_lagrangian_wrt_delta Derivative of Lagrange multiplier wrt scalar delta.
McCullagh_derivative_lagrangian_wrt_delta_vec Derivative of Lagrangian wrt delta_vec.
McCullagh_derivative_lagrangian_wrt_psi Derivative of Lagrangian wrt psi[i1, j1].
McCullagh_derivative_log_l_wrt_alpha Derivative of log(likelihood) wrt alpha[index].
McCullagh_derivative_log_l_wrt_beta Derivative of log(likelihood) wrt beta, as given in appendix of McCullagh.
McCullagh_derivative_log_l_wrt_c Derivative of log(likelihood) wrt c.
McCullagh_derivative_log_l_wrt_delta Derivative of log(likelihood) wrt delta (scalar or vector0.
McCullagh_derivative_log_l_wrt_delta_vec Derivative of log(likelihood) wrt delta_vec[k].
McCullagh_derivative_log_l_wrt_params Derivative of log(likelihood) wrt parameters.
McCullagh_derivative_log_l_wrt_phi Derivative of log(likelihood) wrt phi[i, j]
McCullagh_derivative_log_l_wrt_psi Derivative of log(likelihood) wrt psi.
McCullagh_derivative_omega_wrt_alpha Derivative of Lagrange multiplier omega wrt alpha[index].
McCullagh_derivative_omega_wrt_c Derivative of Lagrange multiplier omega wrt c.
McCullagh_derivative_omega_wrt_delta Derivative of Lagrange multiplier omega wrt scalar delta.
McCullagh_derivative_omega_wrt_delta_vec Derivative of Lagrange multiplier omega wrt vector delta[k].
McCullagh_derivative_omega_wrt_psi Derivative of Lagrange multiplier omega wrt psi[i, j].
McCullagh_derivative_phi_wrt_gamma Derivative of phi wrt gamma.
McCullagh_derivative_pij_wrt_alpha Derivative of pij[i, j] wrt alpha[index]
McCullagh_derivative_pij_wrt_c Derivative pij[i, j] wrt c.
McCullagh_derivative_pij_wrt_delta Derivative of pij[i, j] wrt scalar delta.
McCullagh_derivative_pij_wrt_delta_vec Derivative pij[i,j] wrt vector delta[k].
McCullagh_derivative_pij_wrt_psi Derivative of pij[a, b] wrt psi[h, k]
McCullagh_derivative_pi_wrt_alpha Derivative of pi[i, j] wrt alpha[index].
McCullagh_derivative_pi_wrt_c Derivative pi[i, j] wrt c.
McCullagh_derivative_pi_wrt_delta Derivative of pi[i, j] wrt delta.
McCullagh_derivative_pi_wrt_delta_vec Derivative pi[i, j] wrt delta[k].
McCullagh_derivative_pi_wrt_psi Derivative of pi[i, j] wrt psi[i1, j1].
McCullagh_extract_weights Extracts the weights to convert cumulative model-based probabilities to regular probabilities.
McCullagh_fit_location_regression_model Fit location model
McCullagh_generalized_palindromic_symmetry Generalized version of palindromic symmetry model
McCullagh_generalized_pij_qij Computes culuative model probabilities for the generalized model using vector delta.
McCullagh_generate_names Generates names to label the parameters.
McCullagh_get_statistics Computes summary statistics needed to compute estimate of delta.
McCullagh_gradient_log_l Gradient vector of log(likelihood)
McCullagh_hessian_log_l Hessian matrix of log(likelihood)
McCullagh_initialize_beta Initializes the beta vector.
McCullagh_initialize_delta Compute initial values for scalar delta
McCullagh_initialize_delta_vec Initialize vector delta
McCullagh_initialize_psi Initialize the symmetry matrix psi
McCullagh_initialize_x Initialize design matrix for location model.
McCullagh_is_in_constraint_set Logical test of whether a specific psi will be in the constraint set.
McCullagh_is_pi_invalid Test whether pi matrix is valid, i.e., 0 < all values.
McCullagh_logistic_model MCCullagh's logistic model.
McCullagh_logits Computed cumulative logits.
McCullagh_log_L Computes the log(likelihood).
McCullagh_maximize_q_symmetry Maximize the log(likelihood) wrt parameters phi and alpha
McCullagh_newton_raphson_update Newton-Raphson update.
McCullagh_palindromic_symmetry McCullagh's palindromic symmetry model
McCullagh_penalized Computes the penalized value of a derivative by adding the derivative of the penalty to it.
McCullagh_pij_qij Compute model-based cumulative probabilities
McCullagh_proportional_hazards Computes the proportional hazards.
McCullagh_quasi_symmetry Fits McCullagh's (1978) quasi-symmetry model.
McCullagh_q_symmetry_initialize_alpha Initializes the asymmetry vector alpha
McCullagh_q_symmetry_initialize_phi Initializes the phi matrix
McCullagh_q_symmetry_pi Computes the model-based p-values
McCullagh_second_order_lagrangian_wrt_psi_2 Second derivative of Lagrangian wrt psi^2.
McCullagh_second_order_lagrangian_wrt_psi_alpha Second derivative of Lagrangian wrt psi[i1, j1] and alpha[index].
McCullagh_second_order_lagrangian_wrt_psi_delta Second derivative of Lagrangian wrt psi[i1, j1] and delta.
McCullagh_second_order_lagrangian_wrt_psi_delta_vec Second derivative of Lagrangian wrt psi[i1, j1] and delta_vec[k[.
McCullagh_second_order_log_l_wrt_alpha_2 Second derivative of log(likelihood) wrt alpha^2.
McCullagh_second_order_log_l_wrt_alpha_c Second derivative of log(likelihood) wrt alpha[index] and c.
McCullagh_second_order_log_l_wrt_beta_2 Expected values of second order derivatives of log(likelihood) wrt beta.
McCullagh_second_order_log_l_wrt_c_2 Second derivative of log(likelihood) wrt c^2.
McCullagh_second_order_log_l_wrt_delta_2 Second derivative of log(likelihood) wrt delta^2.
McCullagh_second_order_log_l_wrt_delta_alpha Second derivative of log(likelihood) wrt delta and alpha[index].
McCullagh_second_order_log_l_wrt_delta_c Second derivative of log(likelihood) wrt scalar delta and c.
McCullagh_second_order_log_l_wrt_delta_vec_2 Second derivative of log(likelihood) wrt delta_vec^2.
McCullagh_second_order_log_l_wrt_delta_vec_alpha Second derivative of log(likelihood) wrt delta[k] and alpha[index].
McCullagh_second_order_log_l_wrt_delta_vec_c Second derivative of log(likeloihood) wrt delta_vec[k] and c.
McCullagh_second_order_log_l_wrt_parms Expected second order derivatives of log(likelihood)
McCullagh_second_order_log_l_wrt_psi_2 Second derivative of log(likelihoood) wrt psi^2.
McCullagh_second_order_log_l_wrt_psi_alpha Second derivative of log(likelihoood) wrt ps[i1, j1] and alpha[index].
McCullagh_second_order_log_l_wrt_psi_c Second derivative of log(likelihood) wrt psi[i1, j1] and c.
McCullagh_second_order_log_l_wrt_psi_delta Second derivative of log(likelihood) wrt psi[i1, j1] and scalar delta..
McCullagh_second_order_log_l_wrt_psi_delta_vec Second derivative of log(likelihood) wrt psi[i1, j1] and delta_vec[k].
McCullagh_second_order_omega_wrt_alpha_2 Second derivative of Lagrange multiplier omega wrt alpha^2.
McCullagh_second_order_omega_wrt_alpha_c Second derivative of Lagrange multiplier omega wrt alpha[index] and c.
McCullagh_second_order_omega_wrt_c_2 Second derivative of Lagrange multiplier omega wrt c^2.
McCullagh_second_order_omega_wrt_delta_2 Second derivative of Lagrange multiplier omega wrt scalae delta^2.
McCullagh_second_order_omega_wrt_delta_alpha Second derivative of Lagrange multiplier omega wrt delta and alpha[index].
McCullagh_second_order_omega_wrt_delta_c Second derivative of Lagrange multiplier omega wrt scalar delta and c.
McCullagh_second_order_omega_wrt_delta_vec_2 Second derivative of Lagrange multiplier omega wrt delta_vec^2.
McCullagh_second_order_omega_wrt_delta_vec_alpha Second derivative of Lagrange multiplier omega wrt delta_vec[k] and alpha[index].
McCullagh_second_order_omega_wrt_delta_vec_c Second derivative of Lagrange multiplier omega wrt delta_vec[k] and c.
McCullagh_second_order_omega_wrt_psi_2 Second derivative of Lagrange multiplier omega wrt psi^2.
McCullagh_second_order_omega_wrt_psi_alpha Second derivative of Lagrange multiplier omega wrt psi[i1, j1] and alpha[index].
McCullagh_second_order_omega_wrt_psi_c Second derivative of Lagrange multiplier omega wrt psi[i1, j1] and c.
McCullagh_second_order_omega_wrt_psi_delta Second derivative of Lagrange multiplier omega wrt psi and scalar delta.
McCullagh_second_order_omega_wrt_psi_delta_vec Second derivative of Lagrange multiplier omega wrt psi[i1, j1] and delta_vec[k].
McCullagh_second_order_pi_wrt_alpha_2 Second derivative of pi[i, j] wrt alpha^2.
McCullagh_second_order_pi_wrt_alpha_c Second derivaitve of pi[i, j] wrt alpha[index] and c.
McCullagh_second_order_pi_wrt_c_2 Second order derivative of pi[i, j] wrt c^2.
McCullagh_second_order_pi_wrt_delta_2 Second order derivative of pi[i, j] wrt scalar delta.
McCullagh_second_order_pi_wrt_delta_alpha Second order deriviative of pi[i, j] wrt scalar delta and alpha[index]
McCullagh_second_order_pi_wrt_delta_c Second order derivative of pi[i, j] wrt scalae delta and c.
McCullagh_second_order_pi_wrt_delta_vec_2 Derivative of pi[i, j] wrt delta^2.
McCullagh_second_order_pi_wrt_delta_vec_alpha Second order dertivative of pi[i, j] wrtt delta[k] alpha[index].
McCullagh_second_order_pi_wrt_delta_vec_c Second derivative of pi[i, j] wrt delta[k] and c.
McCullagh_second_order_pi_wrt_psi_2 Second order derivative wrt psi^2.
McCullagh_second_order_pi_wrt_psi_alpha Second order derivative of pi[i, j] wrt psi[i1, j1] and alpha[index].
McCullagh_second_order_pi_wrt_psi_c Second order derivative of pi[i, j] wrt psi[i1, j1] and c.
McCullagh_second_order_pi_wrt_psi_delta Second order derivaitve of pi wrt pshi and scalar delta.
McCullagh_second_order_pi_wrt_psi_delta_vec Second order derivaitve of pi[i, j] wrt psi[i1, j1] and kelta[k].
McCullagh_update_parameters Update the parameters based on Newton-Raphson step.
McCullagh_v_inverse Compute v_inverse (from appendix).
mental_health Relationship between child's mental health and parents' socioeconomic status.
model_ii_effects Gets the effects phi, ksi_i_dot and ksi_dot_j for Model II results.
model_ii_fHat Computes expected counts for Model II
model_ii_ksi Gets the effects phi, ksi_i_dot and ksi_dot_j for Model II matrix of odds-ratios.
model_ii_starting_values Computes crude starting values for Model II
model_ii_star_effects Gets the effects for Model II*
model_ii_star_fHat Computes expected counts for Model II*
model_ii_star_update_phi Updates estimate of phi vector
model_ii_update_alpha Updates the estimate of the alpha vector for Model II
model_ii_update_beta Updates the estimate of the beta vector for Model II
model_ii_update_rho Updates the estimate of the rho vector for Model II
model_ii_update_sigma Updates the estimate of the sigma vector for Model II
model_i_column_theta Computes the column association values theta-hat
model_i_effects Gets the overall effects for Model I.
model_i_fHat Computes model-based expected cell counts for Model I
model_i_normalize_fHat Normalizes pi(fHat) to sum to 1.0. If exclude_diagonal is TRUE, the sum of the off-diagonal terms sums to 1.0.
model_i_row_column_odds_ratios Computes the table of adjacent odds-ratios theta-hat.
model_i_row_theta Computes the row association values theta-hat
model_i_starting_values Computes crude starting values for Model I.
model_i_star_effects Gets the Model I* effects.
model_i_star_fHat Computes expected frequencies for Model I*
model_i_star_update_theta Updates the row/column parameters for Model I*.
model_i_update_alpha Updates the estimate of the alpha vector for Model I
model_i_update_beta Updates the estimate of the beta vector for Model I
model_i_update_delta Updates the estimate of the delta vector for Model I
model_i_update_gamma Updates the estimate of the gamma vector for Model I
model_i_zeta Computes the overall association theta and the row and column effects zeta
movies Movie ratings by two film critics, Siskel and Ebert.

-- N --

new_orleans_data Agreement between two clinicians on presence of multiple sclerosis based on file.
null_association_fHat Computes expected counts for null association model

-- O --

occupational_status Cross tabulation of father's employment status with son's employment status.

-- P --

paranoia Interrater agreement of two psychologists' ratings of paranoia.
pearson_chisq Computes the Pearson X^2 statistic.

-- R --

radiology Interrater agreement of two radiologists diagnosis of severity of carcinoma.

-- S --

Schuster_compute_df Computes the degrees of freedom for the model.
Schuster_compute_pi Compute matrix of model-based proportions pi.
Schuster_compute_starting_values Computes starting values for the model.
Schuster_derivative_log_l_wrt_kappa Derivative of log(likelihood) wrt kappa.
Schuster_derivative_log_l_wrt_marginal_pi Derivative of log(likelihood) wrt marginal_pi[k]
Schuster_derivative_log_l_wrt_v Derivative of log(likelihood) wrt v[i1, j1]
Schuster_derivative_pi_wrt_kappa Derivative of pi[i, j] wrt kappa coefficient.
Schuster_derivative_pi_wrt_marginal_pi Derivative of pi[i, j] wrt marginal_pi[k].
Schuster_derivative_pi_wrt_v Computes derivative of pi[i, j] wrt v[i1, j1]
Schuster_derivative_v_wrt_v Computes derivative of v[i1, j1] wrt v[i2, j2]
Schuster_enforce_constraints_on_v Compute v matrix subject to constraints on rows 1..r-1.
Schuster_gradient Gradient vector log(L) wrt parameters.
Schuster_hessian Computes the hessian matrix of second-order partial derivatives of log(L).
Schuster_is_pi_valid Determines whether the candidate pi matrix is valid.
Schuster_newton_raphson Performs Newton-Raphson step.
Schuster_second_deriv_log_l_wrt_kappa_2 Second order partial log(L) wrt kappa^2.
Schuster_second_deriv_log_l_wrt_kappa_v Second order partial log(L) wrt kappa and v.
Schuster_second_deriv_log_l_wrt_marginal_pi_2 Second order partial log(L) wrt marginal_pi^2.
Schuster_second_deriv_log_l_wrt_marginal_pi_kappa Second order partial log(L) wrt marginal_pi and kappa.
Schuster_second_deriv_log_l_wrt_marginal_pi_v Second order partial log(L) wrt marginal_pi and v.
Schuster_second_deriv_log_l_wrt_v_2 Second order partial log(L) wrt v^2.
Schuster_second_deriv_pi_wrt_kappa_2 Second order partial wrt kappa, kappa
Schuster_second_deriv_pi_wrt_kappa_v Second order partial wrt kappa, v
Schuster_second_deriv_pi_wrt_marginal_pi_2 Second derivative of pi[i, j] wrt marginal_pi[k]^2
Schuster_second_deriv_pi_wrt_marginal_pi_kappa Second order partial wrt kappa, marginal_pi
Schuster_second_deriv_pi_wrt_marginal_pi_v Second order partial pi wrt marginal_pi and v
Schuster_second_deriv_pi_wrt_v_2 Second order partial wrt v^2
Schuster_solve_for_v Solves for the last row and diagonal of symmetry matrix v (v-tilde) using constraint equations
Schuster_solve_for_v1 Solves for the last row and diagonal of symmetry matrix v (parameteer v-tilde) using linear algebra formulation from paper.
Schuster_symmetric_rater_agreement_model Computes the model that has kappa as a coefficient and symmetry.
Schuster_update Computes the Newton-Raphson update
Schuster_v_tilde Computes the common diagonal term v-tilde.
social_status Social mobility data with father's occupational social status and son's occupational social status.
social_status2 Social mobility data with father's occupational social status and son's occupational social status. * categories instead of 7 in social status..
Stuart_marginal_homogeneity Computes Stuart's Q test of marginal homogeneity.

-- T --

taste Taste ratings
teachers Teachers ratings of their students intelligence.
teaching_style Style of teachers rated by supervisors
tonsils Relationship between size of child's tonsils and their status as a carrier of a disease.
tv Interrater agreement of two journalists' evaluation of proposed TV programs.

-- U --

uniform_association_fHat Computes expected counts for uniform association model
uniform_association_update_theta Updates estimate of theta value of the uniform association model

-- V --

var_kappa Computes the sampling variance of kappa.
var_weighted_kappa Computes the sampling variance of weighted kappa.
vision_data Visual acuity of women factory workers.
vision_data_men Visual acuity of men factory workers.
von_Eye_diagonal Fits the diagonal effects model, where each category has its own parameter delta[k].
von_Eye_diagonal_linear_by_linear Fits the diagonal effects model, where each category has its own parameter delta[k], while also incorporating a linear-by-linear term.
von_Eye_equal_weighted_diagonal Fits the equal weighted diagonal model, where the diagonals all have an additional parameter delta, with the constraint that delta is equal across all categories.
von_Eye_equal_weight_diagonal_linear Fits the diagonal effects model, where there is a single delta parameter for all categories, while also incorporating a linear-by-linear term.
von_Eye_linear_by_linear Fits the basic independent rows and columns model incorporating a linear-by-linear term.
von_Eye_main_effect Fits the base model with only independent row and column effects.
von_Eye_weight_by_response_category_design Creates design matrix for weight be response category model.

-- W --

weighted_cov Computes the weighted covariance
weighted_kappa Computes Cohen's 1968 weighted kappa coefficient
weighted_var Computes the weighted variance
winnipeg_data Agreement between two clinicians on presence of multiple sclerosis based on file.