Abstract
The ability to collectively choose the best among a finite set of alternatives is a fundamental cognitive skill for robot swarms. In this paper, we propose a formal definition of the best-of-n problem and a taxonomy that details its possible variants. Based on this taxonomy, we analyze the swarm robotics literature focusing on the decision-making problem dealt with by the swarm. We find that, so far, the literature has primarily focused on certain variants of the best-of-n problem, while other variants have been the subject of only a few isolated studies. Additionally, we consider a second taxonomy about the design methodologies used to develop collective decision-making strategies. Based on this second taxonomy, we provide an in-depth survey of the literature that details the strategies proposed so far and discusses the advantages and disadvantages of current design methodologies.
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CITATION STYLE
Valentini, G., Ferrante, E., & Dorigo, M. (2017, March 1). The best-of-n problem in robot swarms: Formalization, state of the art, and novel perspectives. Frontiers Robotics AI. Frontiers Media S.A. https://doi.org/10.3389/frobt.2017.00009
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