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dc.contributor.authorHsu, Tsai-Hsuan Tony
dc.contributor.authorHoey, Andrew S.
dc.contributor.authorFerrari, Renata
dc.contributor.authorToor, Maren
dc.contributor.authorGordon, Sophie
dc.contributor.authorRemmers, Tiny
dc.contributor.authorSmallhorn-West, James
dc.contributor.authorPiccaluga, Agustina
dc.contributor.authorFigueira, Will F.
dc.coverage.spatialGreat Barrier Reef, northeast Australiaen_AU
dc.date.accessioned2026-07-08T01:54:54Z
dc.date.available2026-07-08T01:54:54Z
dc.date.issued2026-07-08
dc.identifier.urihttps://hdl.handle.net/2123/35539
dc.description.abstractUnderstanding spatial patterns and drivers of corallivory is essential for assessing reef resilience and identifying recovery pathways. Fish corallivory patterns arise from the complex direct and indirect effects of key factors, including food availability (cover of preferred corals), the nature of the corallivore assemblage (richness and biomass), how the corallivores choose to feed (intensity and bout duration), and the local risk profile (predator biomass and habitat structural complexity). While some linkages within this network are well studied, such as the generally positive relationship between coral cover and the abundance of corallivores, the manner and extent to which they can explain overall corallivory rates is less clear. In this study, we used structural equation modelling to provide an integrated assessment of the relative importance of these key elements in both directly and indirectly explaining patterns of total corallivory by fishes (bites in 30 min). We used remote underwater video sampling at four reefs spanning ca. 1,800 km across the Torres Strait (TS) and Great Barrier Reef (GBR) in northeast Australia to quantify corallivory. Total corallivory and corallivore biomass were significantly higher in back- than fore-reef habitats, while neither corallivore feeding behaviour (intensity or duration) nor richness varied across spatial scales. Due to distinct benthic and corallivore assemblages, separate analyses were conducted for GBR and TS sites. Structural equation modelling showed that among GBR sites, corallivore richness, feeding intensity, and event duration were direct positive drivers of corallivory, while the cover of Acropora corals was both a direct and indirect (via its effect on corallivore richness, feeding intensity, and event duration) positive driver of corallivory. In contrast, TS sites, dominated by large massive corals and near monospecific corallivore assemblages, showed no relationship between corallivory and any assemblage or behavioural metrics. Our findings showed little evidence in either area that predation risk (biomass of piscivores) affected corallivory either directly or through changes in feeding behaviour. If used in full or in part, please cite this dataset and the original publication: Hsu T-H.T, Hoey A.S, Ferrari R, Toor M, Gordon S, Remmers T, Smallhorn-West J, Piccaluga A, Figueira W.F (in press). Corallivore assemblage, feeding behavior, and cover of Acropora corals drive fish corallivory on tropical reefs. Ecoshpere. The R script to replicate the analyses is available on GitHub (https://github.com/THTonyHsu/Drivers-of-corallivory.git).en_AU
dc.language.isoenen_AU
dc.rightsCreative Commons Attribution-NonCommercial 4.0en_AU
dc.subjectEcological functionen_AU
dc.subjectResilienceen_AU
dc.subjectBehavioural ecologyen_AU
dc.subjectFeeding activitiesen_AU
dc.subjectIndirect effectsen_AU
dc.subjectChaetodontidaeen_AU
dc.titleData from "Corallivore assemblage, feeding behavior, and cover of Acropora corals drive fish corallivory on tropical reefs"en_AU
dc.typeDataseten_AU
dc.subject.asrcANZSRC FoR code::31 BIOLOGICAL SCIENCES::3103 Ecology::310305 Marine and estuarine ecology (incl. marine ichthyology)en_AU
dc.subject.asrcANZSRC FoR code::31 BIOLOGICAL SCIENCES::3103 Ecology::310302 Community ecology (excl. invasive species ecology)en_AU
dc.identifier.doi10.25910/hevd-0g28
dc.description.methodSee README for the data-specific information. A detailed description of data acquisition and processing can be found in the published manuscript in the Ecosphere (in press).en_AU
dc.relation.otherReef Restoration and Adaptation Program
dc.relation.otherTaiwan–University of Sydney Jointly Funded PhD Scholarship, USYD and Ministry of Education, Taiwan
usyd.facultySeS faculties schools::Faculty of Science::School of Life and Environmental Sciencesen_AU
workflow.metadata.onlyNoen_AU


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