Smooth-projected Neighborhood Pursuit for High-dimensional Nonparanormal Graph Estimation
Zhao, Tuo, Roeder, Kathryn, Liu, Han
–Neural Information Processing Systems
We introduce a new learning algorithm, named smooth-projected neighborhood pursuit, for estimating high dimensional undirected graphs. In particularly, we focus on the nonparanormal graphical model and provide theoretical guarantees for graph estimation consistency. In addition to new computational and theoretical analysis, we also provide an alternative view to analyze the tradeoff between computational efficiencyand statistical error under a smoothing optimization framework. Numerical results on both synthetic and real datasets are provided to support our theory.
Neural Information Processing Systems
Dec-31-2012