| Literature DB >> 25013234 |
Arend Voorman1, Ali Shojaie1, Daniela Witten1.
Abstract
In recent years, there has been considerable interest in estimating conditional independence graphs in high dimensions. Most previous work has assumed that the variables are multivariate Gaussian, or that the conditional means of the variables are linear; in fact, these two assumptions are nearly equivalent. Unfortunately, if these assumptions are violated, the resulting conditional independence estimates can be inaccurate. We propose a semi-parametric method, graph estimation with joint additive models, which allows the conditional means of the features to take on an arbitrary additive form. We present an efficient algorithm for our estimator's computation, and prove that it is consistent. We extend our method to estimation of directed graphs with known causal ordering. Using simulated data, we show that our method performs better than existing methods when there are non-linear relationships among the features, and is comparable to methods that assume multivariate normality when the conditional means are linear. We illustrate our method on a cell-signaling data set.Entities:
Keywords: Conditional independence; Graphical model; Lasso; Non-Gaussianity; Nonlinearity; Sparse additive model; Sparsity
Year: 2014 PMID: 25013234 PMCID: PMC4084701 DOI: 10.1093/biomet/ast053
Source DB: PubMed Journal: Biometrika ISSN: 0006-3444 Impact factor: 2.445