Abstract: Penalized likelihood density estimation provides an effective approach to the nonparametric fitting of graphical models, with conditional independence structures characterized via selective term elimination in functional ANOVA decompositions of the log density. A bottleneck in the approach has been the cost of numerical integration, which has limited its application to low-dimensional problems. In Jeon and Lin (2006), a reformulation was proposed to replace multi-dimensional integrals by sums of products of univariate integrals, greatly reducing the numerical burden in high-dimensional problems. In this article, we derive a cross-validation score for use with the reformulation that delivers effective smoothing parameter selection at a manageable computational cost, introduce a geometric inference tool for the ``testing'' of model terms, and calculate the asymptotic convergence rates of the estimates. An assortment of practical issues are investigated through empirical studies, and open-source software is illustrated with data examples.
Key words and phrases: Cross-validation, graphical models, penalized likelihood, projection, smoothing parameter.