Paper:

# Novel Complex-Valued Neural Network for Dynamic Complex-Valued Matrix Inversion

## Bolin Liao^{*}, Lin Xiao^{*}, Jie Jin^{*}, Lei Ding^{*}, and Mei Liu^{**}

^{*}College of Information Science and Engineering, Jishou University

Jishou 416000, China

^{**}College of Physics, Mechanical and Electrical Engineering, Jishou University

Jishou 416000, China

*J. Adv. Comput. Intell. Intell. Inform.*, Vol.20 No.1, pp. 132-138, 2016.

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