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MacaqueNet: Advancing comparative behavioural research through large-scale collaboration

Version 2 2025-03-14, 10:14
Version 1 2025-01-15, 16:38
journal contribution
posted on 2025-03-14, 10:14 authored by Delphine De Moor, Macaela Skelton, Macaque Net, Federica Amici, Malgorzata E. Arlet, Krishna N. Balasubramaniam, Sébastien Ballesta, Andreas Berghänel, Carol M. Berman, Sofia K. Bernstein, Debottam Bhattacharjee, Eliza Bliss-Moreau, Fany Brotcorne, Marina Butovskaya, Liz A. D. Campbell, Monica Carosi, Mayukh Chatterjee, Matthew. A. Cooper, Claudio De la O, Arianna De Marco, Amanda M. Dettmer, Ashni K. Dhawale, Joseph J. Erinjery, Cara L. Evans, Julia Fischer, Iván García-Nisa, Gwennan Giraud, Roy Hammer, Malene F. Hansen, Anna Holzner, Stefano Kaburu, Martina Konečná, Honnavalli N. Kumara, Marine Larrivaz, Jean-Baptiste Leca, Mathieu Legrand, Julia Lehmann, Jin-Hua Li, Anne-Sophie Lezé, Andrew MacIntosh, Bonaventura MajoloBonaventura Majolo, Laetitia MarechalLaetitia Marechal, et. al.

1.There is a vast and ever-accumulating amount of behavioural data on individually recognised animals, an incredible resource to shed light on the ecological and evolutionary drivers of variation in animal behaviour. Yet, the full potential of such data lies in comparative research across taxa with distinct life histories and ecologies. Substantial challenges impede systematic comparisons, one of which is the lack of persistent, accessible, and standardised databases.

2. Big-team approaches to building standardised databases offer a solution to facilitating reliable cross-species comparisons. By sharing both data and expertise among researchers, these approaches ensure that valuable data, which might otherwise go unused, become easier to discover, repurpose, and synthesise. Additionally, such large-scale collaborations promote a culture of sharing within the research community, incentivizing researchers to contribute their data by ensuring their interests are considered through clear sharing guidelines. Active communication with the data contributors during the standardization process also helps avoid misinterpretation of the data, ultimately improving the reliability of comparative databases.

3. Here, we introduce MacaqueNet, a global collaboration of over 100 researchers (https://macaquenet.github.io/) aimed at unlocking the wealth of cross-species data for research on social behaviour. The MacaqueNet database encompasses data from 19 1981 to the present on 61 populations across 14 species and is the first publicly searchable and standardised database on affiliative and agonistic animal social behaviour. We describe the establishment of MacaqueNet, from the steps we took to start a large-scale collective, to the creation of a cross-species collaborative database and the implementation of data entry and retrieval protocols.

4. We share MacaqueNet's component resources: an R package for data standardisation, website code, the relational database structure, a glossary, and data sharing terms of use. With all these components openly accessible, MacaqueNet can act as a fully replicable template for future endeavours establishing large-scale collaborative comparative databases.

History

School affiliated with

  • School of Psychology (Research Outputs)

Publication Title

Journal of Animal Ecology

Volume

94

Issue

4

Pages/Article Number

463-810

Publisher

Wiley British Ecological Society

ISSN

0021-8790

eISSN

1365-2656

Date Accepted

2024-11-05

Date of First Publication

2025-02-11

Date of Final Publication

2025-04-01

Open Access Status

  • Open Access

Date Document First Uploaded

2024-12-16

Will your conference paper be published in proceedings?

  • N/A