Proceedings:
Proceedings of the International Symposium on Combinatorial Search, 6
Volume
Issue:
Vol. 6 No. 1 (2013): Sixth Annual Symposium on Combinatorial Search
Track:
Full Papers
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Abstract:
In multiobjective state space graph problems, each solution-path is evaluated by a cost vector. These cost vectors can be partially or completely ordered using a preference relation compatible with Pareto dominance. In this context, multiobjective preference-based search (MOPBS) aims at computing the preferred feasible solutions according to a predefined preference model, these preferred solutions being a subset (possibly the entire set) of Pareto optima. Standard algorithms for MOPBS perform a unidirectional search developing the search tree forward from the initial state to a goal state. Instead, in this paper, we focus on bidirectional search algorithms developing simultaneously one forward and one backward search tree. Although bi-directional search has been tested in various single objective problems, its efficiency in a multiobjective setting has never been studied. In this paper, we present several implementations of bidirectional preference-based search convenient for the multiobjective case and investigate their efficiency.
DOI:
10.1609/socs.v4i1.18287
SOCS
Vol. 6 No. 1 (2013): Sixth Annual Symposium on Combinatorial Search