stappDP_mer_fit | R Documentation |
fits a functional dirichlet process linear mixed effects regression model with N observations and n subjects
stappDP_mer_fit(
y,
Z,
X,
W,
w,
subj_mat_,
subj_n,
alpha_a,
alpha_b,
sigma_a,
sigma_b,
tau_a,
tau_b,
K,
subset_one,
subset_two,
threshold,
iter_max,
burn_in,
thin,
seed,
chain,
num_posterior_samples,
fix_alpha,
logging
)
y |
a vector of continuous outcomes |
Z |
a matrix of population level confounders |
X |
a matrix of spatial temporal aggregated predictors |
W |
a design matrix for group specific terms |
w |
a vector of weights for weighted regression |
subj_mat_ |
N x n sparse matrix used to aggregate subject observations |
subj_n |
n x 1 vector of integers representing how many observations correspond to each subject |
alpha_a |
alpha gamma prior shape hyperparameter |
alpha_b |
alpha gamma prior scale hyperparameter |
sigma_a |
precision gamma prior shape hyperparameter |
sigma_b |
precision gamma prior scale hyperparameter |
tau_a |
penalty gamma prior shape hyperparameter |
tau_b |
penalty gamma prior scale hyperparameter |
K |
truncation number |
subset_one |
rank of first smoothing matrix |
subset_two |
rank of second smoothing matrix |
threshold |
number of members per cluster at which cluster is included in regression |
iter_max |
maximum number of iterations |
burn_in |
number of burn in iterations |
thin |
number by which to thin samples |
seed |
rng initializer |
chain |
chain label |
num_posterior_samples |
total number of posterior samples |
fix_alpha |
boolean value that determines whether or not to fix alpha in sampler |
logging |
boolean parameter indicating whether or not a single iteration should be run with print messages indicating successful completion of the Sampler's sub modules |
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