In this paper we investigate the effects of replacing the objective function of a 0-1 mixed-integer convex program (MIP) with a “proximity” one, with the aim of using a black-box solver as a refinement heuristic. Our starting observation is that enumerative MIP methods naturally tend to explore a neighborhood around the solution of a relaxation. A better heuristic performance can however be expected by searching a neighborhood of an integer solution—a result that we obtain by just modifying the objective function of the problem at hand. The relationship of this approach with primal integer methods is also addressed. Promising computational results on different proof-of-concept implementations are presented, suggesting that proximity search can be quite effective in quickly refining a given feasible solution. This is particularly true when a sequence of similar MIPs has to be solved as, e.g., in a column-generation setting.
Matteo Fischetti, Michele Monaci (2014). Proximity search for 0-1 mixed-integer convex programming. JOURNAL OF HEURISTICS, 6(20), 709-731 [10.1007/s10732-014-9266-x].
Proximity search for 0-1 mixed-integer convex programming
MONACI, MICHELE
2014
Abstract
In this paper we investigate the effects of replacing the objective function of a 0-1 mixed-integer convex program (MIP) with a “proximity” one, with the aim of using a black-box solver as a refinement heuristic. Our starting observation is that enumerative MIP methods naturally tend to explore a neighborhood around the solution of a relaxation. A better heuristic performance can however be expected by searching a neighborhood of an integer solution—a result that we obtain by just modifying the objective function of the problem at hand. The relationship of this approach with primal integer methods is also addressed. Promising computational results on different proof-of-concept implementations are presented, suggesting that proximity search can be quite effective in quickly refining a given feasible solution. This is particularly true when a sequence of similar MIPs has to be solved as, e.g., in a column-generation setting.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.