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Graph-Valued Regression

Abstract

Undirected graphical models encode in a graph GG the dependency structure of a random vector YY. In many applications, it is of interest to model YY given another random vector XX as input. We refer to the problem of estimating the graph G(x)G(x) of YY conditioned on X=xX=x as ``graph-valued regression.'' In this paper, we propose a semiparametric method for estimating G(x)G(x) that builds a tree on the XX space just as in CART (classification and regression trees), but at each leaf of the tree estimates a graph. We call the method ``Graph-optimized CART,'' or Go-CART. We study the theoretical properties of Go-CART using dyadic partitioning trees, establishing oracle inequalities on risk minimization and tree partition consistency. We also demonstrate the application of Go-CART to a meteorological dataset, showing how graph-valued regression can provide a useful tool for analyzing complex data.

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