An Asymmetric Proximal Decomposition Method for Convex Programming with Linearly Coupling Constraints

نویسندگان

  • Xiaoling Fu
  • Xiangfeng Wang
  • Haiyan Wang
  • Ying Zhai
چکیده

The problems studied are the separable variational inequalities with linearly coupling constraints. Some existing decomposition methods are very problem specific, and the computation load is quite costly. Combining the ideas of proximal point algorithm PPA and augmented Lagrangian method ALM , we propose an asymmetric proximal decomposition method AsPDM to solve a wide variety separable problems. By adding an auxiliary quadratic term to the general Lagrangian function, our method can take advantage of the separable feature. We also present an inexact version of AsPDM to reduce the computation load of each iteration. In the computation process, the inexact version only uses the function values. Moreover, the inexact criterion and the step size can be implemented in parallel. The convergence of the proposedmethod is proved, and numerical experiments are employed to show the advantage of AsPDM.

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عنوان ژورنال:
  • Adv. Operations Research

دوره 2012  شماره 

صفحات  -

تاریخ انتشار 2012