数学
最小二乘函数近似
线性最小二乘法
迭代法
数学优化
趋同(经济学)
应用数学
互补性(分子生物学)
非线性最小二乘法
算法
估计理论
统计
生物
遗传学
经济
估计员
经济增长
奇异值分解
作者
Ning Zheng,Ken Hayami,Jun-Feng Yin
摘要
For the solution of large sparse nonnegative constrained linear least squares (NNLS) problems, a new iterative method is proposed which uses the CGLS method for the inner iterations and the modulus iterative method for the outer iterations to solve the linear complementarity problem resulting from the Karush--Kuhn--Tucker conditions of the NNLS problem. Theoretical convergence analysis including the optimal choice of the parameter matrix is presented for the proposed method. In addition, the method can be further enhanced by incorporating the active set strategy, which contains two stages; the first stage consists of modulus iterations to identify the active set, while the second stage solves the reduced unconstrained least squares problems only on the inactive variables, and projects the solution into the nonnegative region. Numerical experiments show the efficiency of the proposed methods compared to projection gradient--type methods with fewer iteration steps and less CPU time.
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