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Original Articles

Acute perturbation bounds of weighted Moore–Penrose inverse

Pages 710-720 | Received 30 Oct 2016, Accepted 28 Jan 2017, Published online: 06 Mar 2017
 

Abstract

It is well known that the upper bounds of the weighted Moore–Penrose inverse A¯M,NN,MAM,NN,M1AM,NN,MΔAM,N,A¯=A+ΔA play a fundamental role in the perturbation analysis for the weighted linear least squares problem. In this note, we provide a sharp estimation for A¯M,NN,M, (1) A¯M,NN,M(I2r+ZZT)1AM,NN,M1AM,NN,M ΔAM,N,(I2r+ZZT)1<1if and only if R(A¯)R(A)={0}andR(A¯T)R(AT)={0}.(1) Thus norm estimations for the weighted Moore–Penrose inverses of the acute perturbations can be improved uniformly.

2010 AMS Subject Classifications:

Acknowledgments

The author would like to thank the editor and two referees for their detailed comments which greatly improve the presentation of the paper. Partially work was finished during the author visited at Nis University, the author thanks Professor Dragana S. Cvetković-Ilić for her great hospitality.

Disclosure statement

No potential conflict of interest was reported by the author.

Additional information

Funding

Partially work was finished during the author visited at Nis University which supported by National Natural Science Foundation of China under grants [11401143] and China Scholarship Council (Young Backbone Teachers Project 201607167005). Overseas Returning Foundation of Hei Long Jiang Province (Grant No. LC201402)

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