The Lasso is a very well known penalized regression model, which adds an penalty with parameter on the coefficients to the squared error loss function. The Fused Lasso extends this model by also putting an penalty with parameter 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 and . In the supplement, we also give an algorithm for the general Fused Lasso for the case with predictor matrix with .
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