Data-driven Prediction of Relevant Scenarios for Robust Combinatorial Optimization
About
We study iterative methods for (two-stage) robust combinatorial optimization problems with discrete uncertainty. We propose a machine-learning-based heuristic to determine starting scenarios that provide strong lower bounds. To this end, we design dimension-independent features and train a Random Forest Classifier on small-dimensional instances. Experiments show that our method improves the solution process for larger instances than contained in the training set and also provides a feature importance-score which gives insights into the role of scenario properties.
Marc Goerigk, Jannis Kurtz• 2022
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Scenario Reduction | SEL Medium-scale 50 instances (test) | REG Score6.66 | 28 | |
| Scenario Reduction | SEL Large-scale 50 instances (test) | REG7.33 | 28 | |
| Scenario Reduction | VC Medium-scale 50 instances (test) | REG Score5.2 | 28 | |
| Scenario Reduction | VC Large-scale 50 instances (test) | Registration Error (REG)5.37 | 28 | |
| Vertex Cover | VC-20-50 small (test) | REG4.4 | 26 | |
| Selection | SEL-20-50 small (test) | REG Score6.93 | 26 | |
| VC | VC problem size instances 5x scale (test) | Regret (%)5.76 | 9 | |
| SEL | problem size instances SEL 5x scale (test) | Regret (%)2.96 | 9 | |
| Capacitated Facility Location Problem | CFLP Medium scale | Regret10 | 5 | |
| Capacitated Facility Location Problem | CFLP Large scale | Regret0.1 | 5 |
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