a log posterior density value at regression coefficients of a model, based on the g-prior on the regression coefficients and inverse gamma prior (0.01,0.01) on the variance.
obj_fun_g(ind,X,y,n,p,tuning)
the index set of a model
the covariates
the response variable
the sample size
the total number of covariates
a value of the tuning parameter
Shin, M., Bhattacharya, A., Johnson V. E. (2018) A Scalable Bayesian Variable Selection Using Nonlocal Prior Densities in Ultrahigh-dimensional Settings, Statistica Sinica.
Rossell, D., Telesca, D., and Johnson, V. E. (2013) High-dimensional Bayesian classifiers using non-local priors, Statistical Models for Data Analysis, 305-313.