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Mauro Birattari

Researcher at Université libre de Bruxelles

Publications -  295
Citations -  22319

Mauro Birattari is an academic researcher from Université libre de Bruxelles. The author has contributed to research in topics: Robot & Swarm robotics. The author has an hindex of 49, co-authored 285 publications receiving 20661 citations. Previous affiliations of Mauro Birattari include Technische Universität Darmstadt.

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Ant Colony Optimization

TL;DR: Ant colony optimization (ACO) is a relatively new approach to problem solving that takes inspiration from the social behaviors of insects and of other animals as discussed by the authors In particular, ants have inspired a number of methods and techniques among which the most studied and the most successful is the general purpose optimization technique known as ant colony optimization.
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Ant colony optimization: artificial ants as a computational intelligence technique

TL;DR: The introduction of ant colony optimization (ACO) is discussed and all ACO algorithms share the same idea and the ACO is formalized into a meta-heuristics for combinatorial problems.
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Swarm robotics: a review from the swarm engineering perspective

TL;DR: This paper analyzes the literature from the point of view of swarm engineering and proposes two taxonomies: in the first taxonomy, works that deal with design and analysis methods are classified; in the second, works according to the collective behavior studied are classified.
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The irace package: Iterated racing for automatic algorithm configuration

TL;DR: The rationale underlying the iterated racing procedures in irace is described and a number of recent extensions are introduced, including a restart mechanism to avoid premature convergence, the use of truncated sampling distributions to handle correctly parameter bounds, and an elitist racing procedure for ensuring that the best configurations returned are also those evaluated in the highest number of training instances.