Title of article :
Correlated variables in regression: Clustering and sparse estimation
Author/Authors :
Bühlmann، نويسنده , , Peter and Rütimann، نويسنده , , Philipp and van de Geer، نويسنده , , Sara Q. Zhang، نويسنده , , Cun-Hui، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
We consider estimation in a high-dimensional linear model with strongly correlated variables. We propose to cluster the variables first and do subsequent sparse estimation such as the Lasso for cluster-representatives or the group Lasso based on the structure from the clusters. Regarding the first step, we present a novel and bottom-up agglomerative clustering algorithm based on canonical correlations, and we show that it finds an optimal solution and is statistically consistent. We also present some theoretical arguments that canonical correlation based clustering leads to a better-posed compatibility constant for the design matrix which ensures identifiability and an oracle inequality for the group Lasso. Furthermore, we discuss circumstances where cluster-representatives and using the Lasso as subsequent estimator leads to improved results for prediction and detection of variables. We complement the theoretical analysis with various empirical results.
Keywords :
Canonical correlation , Group Lasso , High-dimensional inference , Lasso , Oracle inequality , Variable screening , variable selection , Hierarchical clustering
Journal title :
Journal of Statistical Planning and Inference
Journal title :
Journal of Statistical Planning and Inference