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GPCERF 0.2.4 (2024-04-09)
Changed
- Dr. Boyu Ren is now the package maintainer.
GPCERF 0.2.3 (2024-03-02)
Changed
estimate_cerf_nngp
takes outcome_col
,
treatment_col
, and covariates_col
names as
inputs.
estimate_cerf_gp
takes outcome_col
,
treatment_col
, and covariates_col
names as
inputs.
Added
estimate_cerf_gp
and estimate_cerf_nngp
have notes on selecting w
.
GPCERF 0.2.2 (2024-02-16)
Changed
n_thread
-> nthread
in
estimate_noise_nn
documentation.
GPCERF 0.2.1 (2023-01-15)
Changed
full GP
–> standard GP
plot
s of exposure response function objects include
covariate balance.
formula
is no longer need in nn functions.
estimate_gps
now returns the used exposure level,
too.
train_gps
–> estimate_gps
- The nearest neighbor approach does not get
expand
as an
input parameter (n_neighbor
* expand
–>
n_neighbor
).
- The weighted covariate balance now is computed using the wCorr
package.
GPCERF 0.2.0 (2023-01-22)
Changed
- estimate_noise_nn now allows for parallelization with an added
argument
nthread
for the number of CPUs used in
parallel.
- estimate_mean_sd_nn now only computes the posterior variance.
- find_optimal_nn now returns the posterior mean and covariate balance
for the optimal hyper-parameter values.
- Add an argument kernel_fn to all nn related functions to allow for
user-defined kernel functions.
- Add an argument formula to all nn related functions to allow for
user-defined design matrix.
- find_optimal_nn becomes an internal function.
- estimate_noise_gp and estimate_noise_nn become internal
functions.
- estimate_mean_sd_nn becomes an internal function.
- compute_weight_gp becomes an internal function.
- compute_w_corr accepts w and confounders separately. It also
normalizes w internally.
- compute_posterior_sd_nn becomes an internal function.
- compute_posterior_m_nn becomes an internal function.
- compute_derive_weights_gp becomes an internal function.
- compute_m_sigma becomes an internal function.
- compute_inverse becomes an internal function.
- In compute_m_sigma, tuning option does not have a default
value.
- train_gps does not have default values.
- train_gps accepts vector of the SuperLearner package’s
libraries.
- train_GPS -> train_gps
GPCERF 0.1.0 (2022-07-02)
Changed
- nn_cp_calc -> compute_rl_deriv_nn
- deriv_nn_fast -> compute_deriv_nn
- get_nn_sd -> compute_posterior_sd_nn
- nn_sigma_est -> estimate_noise_nn
- idx.all -> idx_select
- GPS.new -> GPS_w
- w.new -> w
- get.nn.fast -> compute_posterior_m_nn
- w.est -> w
- nn_balance -> best_nn_cb
Added
- Package website using pkgdown
- Logger functions
- compute_sd_gp function
GPCERF 0.0.1 (2022-03-31)
Changed
- Removed examples from internal functions
- w.obs -> w_obs
- inv.Sigma.obs -> inv_sigma_obs
- obs.use -> scaled_obs
- tune.fn -> compute_m_sigma
- GP.weights.test -> compute_weight_gp
- data.generate -> generate_synthetic_data
Added
- estimate_noise function
- estimate_cerf_gp function
- compute_inverse function
- compute_w_corr function
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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