Title :
Penalty decomposition method for solving ℓ0 regularized problems: Application to trend filtering
Author :
Patrascu, Andrei ; Necoara, Ion
Author_Institution :
Autom. Control & Syst. Eng. Dept., Univ. Politeh. Bucharest, Bucharest, Romania
Abstract :
In this paper we consider constrained ℓ0 sparse optimization problems, that is, constrained problems with the objective function composed of a smooth part and an ℓ0 regularization term. We analyze a penalty decomposition (PD) method for solving these nonconvex problems, in which a sequence of penalty subproblems are solved by alternating minimization (AM) method. Although the (AM) method finds only a local solution of the subproblem, the sequence generated by (PD) algorithm converges to a local minimum of the original problem. We estimate the iteration complexity of the (AM) method used for finding a local minimum of the penalty subproblem. In particular we prove that, under strong convexity assumption, this method has linear convergence. As an application for our general model, we propose the ℓ0 trend filtering for estimation of the mean and variance of a given time series. We test the practical performance of our (PD) algorithm on such ℓ0 trend filtering problems.
Keywords :
concave programming; estimation theory; gradient methods; time series; ℓ0 regularized problems; ℓ0 sparse optimization problems; ℓ0 trend filtering; AM method; PD method; alternating minimization method; iteration complexity; mean estimation; nonconvex problems; objective function; penalty decomposition method; time series; variance estimation; Complexity theory; Convergence; Estimation; Market research; Minimization methods; Optimization;
Conference_Titel :
System Theory, Control and Computing (ICSTCC), 2014 18th International Conference
Conference_Location :
Sinaia
DOI :
10.1109/ICSTCC.2014.6982506