DSAIDMOCNov 22, 2022

Decision Diagram-Based Branch-and-Bound with Caching for Dominance and Suboptimality Detection

arXiv:2211.13118v57 citationsh-index: 23Has Code
Originality Incremental advance
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This is an incremental improvement for researchers and practitioners in optimization, enhancing efficiency in solving difficult problems.

The paper tackles the problem of speeding up branch-and-bound algorithms for discrete optimization by introducing a caching mechanism to prevent repeated expansion of nodes, resulting in reduced node expansions and faster solution times for benchmark instances.

The branch-and-bound algorithm based on decision diagrams introduced by Bergman et al. in 2016 is a framework for solving discrete optimization problems with a dynamic programming formulation. It works by compiling a series of bounded-width decision diagrams that can provide lower and upper bounds for any given subproblem. Eventually, every part of the search space will be either explored or pruned by the algorithm, thus proving optimality. This paper presents new ingredients to speed up the search by exploiting the structure of dynamic programming models. The key idea is to prevent the repeated expansion of nodes corresponding to the same dynamic programming states by querying expansion thresholds cached throughout the search. These thresholds are based on dominance relations between partial solutions previously found and on the pruning inequalities of the filtering techniques introduced by Gillard et al. in 2021. Computational experiments show that the pruning brought by this caching mechanism allows significantly reducing the number of nodes expanded by the algorithm. This results in more benchmark instances of difficult optimization problems being solved in less time while using narrower decision diagrams.

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