An efficient algorithm for structured sparse quantile regression
Abstract
Quantile regression is studied in combination with a penalty which promotes structured (or group) sparsity. A mixed 1,∞-norm on the parameter vector is used to impose structured sparsity on the traditional quantile regression problem. An algorithm is derived to calculate the piece-wise linear solution path of the corresponding minimization problem. A Matlab implementation of the proposed algorithm is provided and some applications of the methods are also studied.
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