JOURNAL ARTICLE

Flexible, abstract rhythm perception in bumble bees.

  • Published In: Science, 2026, v. 392, n. 6793. P. 93 1 of 3

  • Database: Academic Search Ultimate 2 of 3

  • Authored By: Zeng, Zijie; Barron, Andrew B.; Peng, Fei; Solvi, Cwyn 3 of 3

Abstract

Flexible, abstract rhythm perception underpins human music, dance, and speech, but thus far, it has only been demonstrated in a few birds and mammals. In this work, we show that bumble bees also form robust abstract rhythm representations. Free-flying bees learned to discriminate two arbitrary repeating flashing light sequences, balanced to preclude the use of any local cues. Bees successfully recognized these learned rhythmic patterns at new, faster, and slower tempi. Bees trained on vibrational patterns transferred their learning to equivalent flashing light patterns, demonstrating cross-modal rhythm perception. These findings suggest that an insect brain can encode and generalize arbitrary complex temporal patterns, which suggests that abstract rhythm perception can emerge from relatively simple neural architectures and points to deep evolutionary roots for a domain‐general rhythm cognition across animals. Editor's summary: Humans are well known to appreciate rhythm, most notably in music and dance. However, rhythm, in the form of regular presentation of stimuli, is present across many aspects of the natural world, and we might expect it to occur in other species. However, thus far, it has only been formally identified in a few birds and mammals, largely vocal learning species. Zeng et al. now show that bumble bees can discriminate a rhythmic pattern even across tempos and sensory inputs. This suggests that such an ability may have deep evolutionary roots. —Sacha Vignieri [ABSTRACT FROM AUTHOR]

Additional Information

  • Source:Science. 2026/04, Vol. 392, Issue 6793, p93
  • Document Type:Article
  • Subject Area:Zoology
  • Publication Date:2026
  • ISSN:0036-8075
  • DOI:10.1126/science.adz2894
  • Accession Number:192726653
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