Martin Charles Golumbic, Renu C. Laskar
Discrete Applied Mathematics
Regularization plays a critical role in modern statistical research, especially in high-dimensional variable selection problems. Existing Bayesian methods usually assume independence between variables a priori. In this article, we propose a novel Bayesian approach, which explicitly models the dependence structure through a graph Laplacian matrix. We also generalize the graph Laplacian to allow both positively and negatively correlated variables. A prior distribution for the graph Laplacian is then proposed, which allows conjugacy and thereby greatly simplifies the computation. We show that the proposed Bayesian model leads to proper posterior distribution. Connection is made between our method and some existing regularization methods, such as Elastic Net, Lasso, Octagonal Shrinkage and Clustering Algorithm for Regression (OSCAR) and Ridge regression. An efficient Markov Chain Monte Carlo method based on parameter augmentation is developed for posterior computation. Finally, we demonstrate the method through several simulation studies and an application on a real data set involving key performance indicators of electronics companies. © 2014 International Society for Bayesian Analysis.
Martin Charles Golumbic, Renu C. Laskar
Discrete Applied Mathematics
J.P. Locquet, J. Perret, et al.
SPIE Optical Science, Engineering, and Instrumentation 1998
F. Odeh, I. Tadjbakhsh
Archive for Rational Mechanics and Analysis
Satoshi Hada
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences