Title :
Many-Valued MinSAT Solving
Author :
Argelich, Josep ; Chu Min Li ; Manya, F. ; Zhu Zhu
Abstract :
Solving combinatorial optimization problems via their reduction to Boolean MinSAT is an emerging generic problem solving approach. In this paper we extend MinSAT with many-valued variables, and refer to the new formalism as Many-Valued MinSAT. For Many-Valued MinSAT, we describe an exact solver, Mv-MinSatz, which builds on the Boolean branch-and-bound solver MinSatz, and exploits the domain information of many-valued variables. Moreover, we also define efficient and robust encodings from optimization problems with many-valued variables to MinSAT. The empirical results provide evidence of the good performance of the new encodings, and of Many-Valued MinSAT over Boolean MinSAT on relevant optimization problems.
Keywords :
Boolean algebra; combinatorial mathematics; computability; encoding; optimisation; tree searching; Boolean branch-and-bound solver MinSatz; Mv-MinSatz; combinatorial optimization problems; generic problem solving approach; many-valued MinSAT solving; many-valued variables; robust encodings; Distance measurement; Encoding; Input variables; Optimization; Robustness; Silicon; Upper bound; Many-Valued Logics; MaxSAT; MinSAT;
Conference_Titel :
Multiple-Valued Logic (ISMVL), 2014 IEEE 44th International Symposium on
Conference_Location :
Bremen
DOI :
10.1109/ISMVL.2014.14