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A greedy algorithm for sparse precision matrix approximation

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abstract

Precision matrix estimation is an important problem in statistical data analysis. This paper introduces a fast sparse precision matrix estimation algorithm, namely GISS$^{{\rho}}$, which is originally introduced for compressive sensing. The algorithm GISS$^{{\rho}}$ is derived based on $l_1$ minimization while with the computation advantage of greedy algorithms. We analyze the asymptotic convergence rate of the proposed GISS$^{{\rho}}$ for sparse precision matrix estimation and sparsity recovery properties with respect to the stopping criteria. Finally, we numerically compare GISS$^{\rho}$ to other sparse recovery algorithms, such as ADMM and HTP in three settings of precision matrix estimation. The numerical results show the advantages of the proposed algorithm.

fields

math.ST 1

years

2019 1

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UNVERDICTED 1

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  • A greedy algorithm for sparse precision matrix approximation math.ST · 2019-07-01 · unverdicted · none · ref 43 · internal anchor

    GISS^ρ is a greedy algorithm for sparse precision matrix estimation with analyzed asymptotic convergence and sparsity recovery, showing numerical advantages over ADMM and HTP.