MPILS: an automatic tuner for MILP solvers
From MaRDI portal
Publication:6047892
DOI10.1016/j.cor.2023.106344OpenAlexW4384562776MaRDI QIDQ6047892
El Mehdi Er Raqabi, Nizar El Hachemi, Issmail El Hallaoui, Abdelmoutalib Metrane, François Soumis, Ilyas Himmich
Publication date: 13 September 2023
Published in: Computers \& Operations Research (Search for Journal in Brave)
Full work available at URL: https://publications.polymtl.ca/52753/
metaheuristicsmachine learningautomatic algorithm configurationCPLEXMILP solversparameter configuration problem
Cites Work
- How much do we ``pay for using default parameters?
- Tuning metaheuristics. A machine learning Perspective
- Improving local search heuristics for some scheduling problems. I
- Combining simulated annealing with local search heuristics
- MIPLIB 2017: data-driven compilation of the 6th mixed-integer programming library
- Automatically improving the anytime behaviour of optimisation algorithms
- Engineering stochastic local search algorithms. Designing, implementing and analyzing effective heuristics. International workshop, SLS 2007, Brussels, Belgium, September 6--8, 2007. Proceedings.
- An Iterated Dynasearch Algorithm for the Single-Machine Total Weighted Tardiness Scheduling Problem
- The Sequential Parameter Optimization Toolbox
- Sequential Model-Based Parameter Optimization: an Experimental Investigation of Automated and Interactive Approaches
- Fine-Tuning of Algorithms Using Fractional Experimental Designs and Local Search
- ParamILS: An Automatic Algorithm Configuration Framework
- A Survey of Methods for Automated Algorithm Configuration
- The ASA Statement on p-Values: Context, Process, and Purpose
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
This page was built for publication: MPILS: an automatic tuner for MILP solvers