New baselines for dual and config #41
gasse
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Dear Participants,
Thanks to the contributions @lascavana and @antoniach, we now have two baseline methods for the dual and the config tasks! 🎉
Dual task - imitation of the Strong Branching expert
This baseline aims at imitating the branching decisions of the Strong Branching (SB) expert rule (see Achterberg, sec. 5.4), via machine learning, with a Graph Neural Network (GNN) model (see Gasse et al.). The proposed approach consists of two steps:
Code and readme file here.
Configuration task - parameter tuning with SMAC
This baseline aims at finding a fixed set of good parameter values for each problem benchmark, by using the hyperparameter tuning tool SMAC. In particular, the baseline uses SMAC4HPO, which performs Bayesian optimization using a Random Forest model. The extensive set of tuned SCIP parameters is the following:
Code and readme file here.
Please feel free to have a look at these codes, reuse them and extend them as you wish.
Good luck with your submissions,
Best,
The organizing team
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