Algebraic Maximum Likelihood Estimators


[Up] [Top]

Documentation for package ‘algebraic.mle’ version 0.9.0

Help Pages

algebraic.mle-package 'algebraic.mle': A package for algebraically operating on and generating maximum likelihood estimators from existing maximum likelihood estimators.
aic Generic method for obtaining the AIC of a fitted distribution object fit.
aic.mle Method for obtaining the AIC of an 'mle' object.
algebraic.mle 'algebraic.mle': A package for algebraically operating on and generating maximum likelihood estimators from existing maximum likelihood estimators.
bias Generic method for computing the bias of an estimator object.
bias.mle Computes the bias of an 'mle' object assuming the large sample approximation is valid and the MLE regularity conditions are satisfied. In this case, the bias is zero (or zero vector).
bias.mle_boot Computes the estimate of the bias of a 'mle_boot' object.
confint.mle Function to compute the confidence intervals of 'mle' objects.
confint.mle_boot Method for obtained the confidence interval of an 'mle_boot' object. Note: This impelements the 'vcov' method defined in 'stats'.
confint_from_sigma Function to compute the confidence intervals from a variance-covariance matrix
expectation.mle Expectation operator applied to 'x' of type 'mle' with respect to a function 'g'. That is, 'E(g(x))'.
is_mle Determine if an object 'x' is an 'mle' object.
is_mle_boot Determine if an object is an 'mle_boot' object.
loglik_val Generic method for obtaining the log-likelihood value of a fitted MLE object.
loglik_val.mle Method for obtaining the log-likelihood of an 'mle' object.
marginal.mle Method for obtaining the marginal distribution of an MLE that is based on asymptotic assumptions:
mle Constructor for making 'mle' objects, which provides a common interface for maximum likelihood estimators.
mle_boot Bootstrapped MLE
mle_numerical This function takes the output of 'optim', 'newton_raphson', or 'sim_anneal' and turns it into an 'mle_numerical' (subclass of 'mle') object.
mle_weighted Accepts a list of 'mle' objects for some parameter, say 'theta', and combines them into a single estimator 'mle_weighted'.
mse Generic method for computing the mean squared error (MSE) of an estimator, 'mse(x) = E[(x-mu)^2]' where 'mu' is the true parameter value.
mse.mle Computes the MSE of an 'mle' object.
mse.mle_boot Computes the estimate of the MSE of a 'boot' object.
nobs.mle Method for obtaining the number of observations in the sample used by an 'mle'.
nobs.mle_boot Method for obtaining the number of observations in the sample used by an 'mle'.
nparams.mle Method for obtaining the number of parameters of an 'mle' object.
nparams.mle_boot Method for obtaining the number of parameters of an 'boot' object.
obs.mle Method for obtaining the observations used by the 'mle' object 'x'.
obs.mle_boot Method for obtaining the observations used by the 'mle'.
observed_fim Generic method for computing the observed FIM of an 'mle' object.
observed_fim.mle Function for obtaining the observed FIM of an 'mle' object.
orthogonal Generic method for determining the orthogonal parameters of an estimator.
orthogonal.mle Method for determining the orthogonal components of an 'mle' object 'x'.
params.mle Method for obtaining the parameters of an 'mle' object.
params.mle_boot Method for obtaining the parameters of an 'boot' object.
pred Generic method for computing the predictive confidence interval given an estimator object 'x'.
pred.mle Estimate of predictive interval of 'T|data' using Monte Carlo integration.
print.mle Print method for 'mle' objects.
print.summary_mle Function for printing a 'summary' object for an 'mle' object.
rmap.mle Computes the distribution of 'g(x)' where 'x' is an 'mle' object.
sampler.mle Method for sampling from an 'mle' object.
sampler.mle_boot Method for sampling from an 'mle_boot' object.
score_val Generic method for computing the score of an estimator object (gradient of its log-likelihood function evaluated at the MLE).
score_val.mle Computes the score of an 'mle' object (score evaluated at the MLE).
se Generic method for obtaining the standard errors of an estimator.
se.mle Function for obtaining an estimate of the standard error of the MLE object 'x'.
summary.mle Function for obtaining a summary of 'object', which is a fitted 'mle' object.
vcov.mle Computes the variance-covariance matrix of 'mle' object.
vcov.mle_boot Computes the variance-covariance matrix of 'boot' object. Note: This impelements the 'vcov' method defined in 'stats'.