Generating Hard Instances for Robust Combinatorial Optimization

11/02/2018
by   Marc Goerigk, et al.
0

While research in robust optimization has attracted considerable interest over the last decades, its algorithmic development has been hindered by several factors. One of them is a missing set of benchmark instances that make algorithm performance better comparable, and makes reproducing instances unnecessary. Such a benchmark set should contain hard instances in particular, but so far, the standard approach to produce instances has been to sample values randomly uniformly. In this paper we introduce a new method to produce hard instances for min-max combinatorial optimization problems, which is based on an optimization model itself. Using the Selection problem as an example, we show that it is possible to produce instances which are ten times as hard to solve on average for a state-of-the-art mixed-integer programming solver.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset