Strong Branching Inequalities for Convex Mixed Integer Nonlinear Programs
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Kilinc, M.
Linderoth, J.
Luedtke, J.
Miller, A.
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Technical Report
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University of Wisconsin-Madison Department of Computer Sciences
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Abstract
Strong branching is an effective branching technique that can
significantly reduce the size of the branch-and-bound tree for solving Mixed
Integer Nonlinear Programming (MINLP) problems. The focus of this
paper is to demonstrate how to effectively use discarded
information from strong branching to strengthen relaxations of MINLP
problems. Valid inequalities such as branching-based
linearizations, various forms of disjunctive inequalities, and
mixing-type inequalities are all discussed. The
inequalities span a spectrum from those that require almost no extra
effort to compute to those that require the solution of an additional
linear program. In the end, we perform an extensive computational
study to measure the impact of each of our proposed techniques.
Computational results reveal that existing algorithms can be
significantly improved by leveraging the information generated as a
byproduct of strong branching in the form of valid inequalities.
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TR1696