Learn R Programming

FBMS (version 1.3)

gaussian.loglik: Log Likelihood Function for Gaussian Regression with a Jeffreys Prior and BIC Approximation

Description

Log Likelihood Function for Gaussian Regression with a Jeffreys Prior and BIC Approximation

Usage

gaussian.loglik(y, x, model, complex, mlpost_params)

Value

A list with the log marginal likelihood combined with the log prior (crit) and the posterior mode of the coefficients (coefs).

Arguments

y

A vector containing the dependent variable

x

The matrix containing the precalculated features

model

The model to estimate as a logical vector

complex

A list of complexity measures for the features

mlpost_params

A list of parameters for the log likelihood, supplied by the user

Examples

Run this code
gaussian.loglik(rnorm(100), matrix(rnorm(100)), TRUE, list(oc = 1), NULL)


Run the code above in your browser using DataLab