336

A path algorithm for the Fused Lasso Signal Approximator

Abstract

The Lasso is a very well known penalized regression model, which adds an L1L_{1} penalty with parameter λ1\lambda_{1} on the coefficients to the squared error loss function. The Fused Lasso extends this model by also putting an L1L_{1} penalty with parameter λ2\lambda_{2} on the difference of neighboring coefficients, assuming there is a natural ordering. In this paper, we develop a fast path algorithm for solving the Fused Lasso Signal Approximator that computes the solutions for all values of λ1\lambda_1 and λ2\lambda_2. In the supplement, we also give an algorithm for the general Fused Lasso for the case with predictor matrix \bX\mathdsRn×p\bX \in \mathds{R}^{n \times p} with rank(\bX)=p\text{rank}(\bX)=p.

View on arXiv
Comments on this paper