fit_haldensify {haldensify} | R Documentation |
Fit Conditional Density Estimation for a Sequence of HAL Models
Description
Fit Conditional Density Estimation for a Sequence of HAL Models
Usage
fit_haldensify(
A,
W,
wts = rep(1, length(A)),
grid_type = "equal_range",
n_bins = round(c(0.5, 1, 1.5, 2) * sqrt(length(A))),
cv_folds = 5L,
lambda_seq = exp(seq(-1, -13, length = 1000L)),
smoothness_orders = 0L,
...
)
Arguments
A |
The numeric vector of observed values.
|
W |
A data.frame , matrix , or similar giving the values of
baseline covariates (potential confounders) for the observed units. These
make up the conditioning set for the conditional density estimate.
|
wts |
A numeric vector of observation-level weights. The default
is to weight all observations equally.
|
grid_type |
A character indicating the strategy to be used in
creating bins along the observed support of A . For bins of equal
range, use "equal_range" ; consult the documentation of
cut_interval for more information. To ensure each
bin has the same number of observations, use "equal_mass" ; consult
the documentation of cut_number for details.
|
n_bins |
This numeric value indicates the number(s) of bins into
which the support of A is to be divided. As with grid_type ,
multiple values may be specified, in which case cross-validation will be
used to choose the optimal number of bins. The default sets the candidate
choices of the number of bins based on heuristics tested in simulation.
|
cv_folds |
A numeric indicating the number of cross-validation
folds to be used in fitting the sequence of HAL conditional density models.
|
lambda_seq |
A numeric sequence of values of the regularization
parameter of Lasso regression; passed to fit_hal .
|
smoothness_orders |
A integer indicating the smoothness of the
HAL basis functions; passed to fit_hal . The default
is set to zero, for indicator basis functions.
|
... |
Additional (optional) arguments of fit_hal
that may be used to control fitting of the HAL regression model. Possible
choices include use_min , reduce_basis , return_lasso ,
and return_x_basis , but this list is not exhaustive. Consult the
documentation of fit_hal for complete details.
|
Details
Estimation of the conditional density of A|W via a cross-validated
highly adaptive lasso, used to estimate the conditional hazard of failure
in a given bin over the support of A.
Value
A list
, containing density predictions for the sequence of
fitted HAL models; the index and value of the L1 regularization parameter
minimizing the density loss; and the sequence of empirical risks for the
sequence of fitted HAL models.
Examples
# simulate data: W ~ U[-4, 4] and A|W ~ N(mu = W, sd = 0.5)
n_train <- 50
w <- runif(n_train, -4, 4)
a <- rnorm(n_train, w, 0.5)
# fit cross-validated HAL-based density estimator of A|W
haldensify_cvfit <- fit_haldensify(
A = a, W = w, n_bins = 10L, lambda_seq = exp(seq(-1, -10, length = 100)),
# the following arguments are passed to hal9001::fit_hal()
max_degree = 3, reduce_basis = 1 / sqrt(length(a))
)
[Package
haldensify version 0.2.3
Index]