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Exact augmented Lagrangian duality for mixed integer linear programming

Authors :
Andy Sun
Shabbir Ahmed
Mohammad Javad Feizollahi
Source :
Mathematical Programming. 161:365-387
Publication Year :
2016
Publisher :
Springer Science and Business Media LLC, 2016.

Abstract

We investigate the augmented Lagrangian dual (ALD) for mixed integer linear programming (MIP) problems. ALD modifies the classical Lagrangian dual by appending a nonlinear penalty function on the violation of the dualized constraints in order to reduce the duality gap. We first provide a primal characterization for ALD for MIPs and prove that ALD is able to asymptotically achieve zero duality gap when the weight on the penalty function is allowed to go to infinity. This provides an alternative characterization and proof of a recent result in Boland and Eberhard (Math Program 150(2):491---509, 2015, Proposition 3). We further show that, under some mild conditions, ALD using any norm as the augmenting function is able to close the duality gap of an MIP with a finite penalty coefficient. This generalizes the result in Boland and Eberhard (2015, Corollary 1) from pure integer programming problems with bounded feasible region to general MIPs. We also present an example where ALD with a quadratic augmenting function is not able to close the duality gap for any finite penalty coefficient.

Details

ISSN :
14364646 and 00255610
Volume :
161
Database :
OpenAIRE
Journal :
Mathematical Programming
Accession number :
edsair.doi...........ab3e252bdfe250a15f9181edb512bced
Full Text :
https://doi.org/10.1007/s10107-016-1012-8