Efficient visual learning by bumble bees in virtual‐reality conditions: Size does not matter

Author:

Lafon Gregory1,Paoli Marco1,Paffhausen Benjamin H.1,Sanchez Gabriela de Brito1ORCID,Lihoreau Mathieu1,Avarguès‐Weber Aurore1,Giurfa Martin12ORCID

Affiliation:

1. Centre de Recherches sur la Cognition Animale Centre de Biologie Intégrative (CBI) University of Toulouse, CNRS, UPS Toulouse France

2. French Academy of Sciences for University Professors Institut Universitaire de France (IUF) Paris France

Abstract

AbstractRecent developments allowed establishing virtual‐reality (VR) setups to study multiple aspects of visual learning in honey bees under controlled experimental conditions. Here, we adopted a VR environment to investigate the visual learning in the buff‐tailed bumble bee Bombus terrestris. Based on responses to appetitive and aversive reinforcements used for conditioning, we show that bumble bees had the proper appetitive motivation to engage in the VR experiments and that they learned efficiently elemental color discriminations. In doing so, they reduced the latency to make a choice, increased the proportion of direct paths toward the virtual stimuli and walked faster toward them. Performance in a short‐term retention test showed that bumble bees chose and fixated longer on the correct stimulus in the absence of reinforcement. Body size and weight, although variable across individuals, did not affect cognitive performances and had a mild impact on motor performances. Overall, we show that bumble bees are suitable experimental subjects for experiments on visual learning under VR conditions, which opens important perspectives for invasive studies on the neural and molecular bases of such learning given the robustness of these insects and the accessibility of their brain.

Funder

H2020 European Research Council

Institut Universitaire de France

Publisher

Wiley

Subject

Insect Science,General Biochemistry, Genetics and Molecular Biology,Agronomy and Crop Science,Ecology, Evolution, Behavior and Systematics

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