6533b832fe1ef96bd129a460
RESEARCH PRODUCT
Covariate-informed latent interaction models: Addressing geographic & taxonomic bias in predicting bird-plant interactions
Georgia PapadogeorgouCarolina BelloOtso OvaskainenDavid B. Dunsonsubject
Methodology (stat.ME)FOS: Computer and information sciencesStatistics and ProbabilityStatistics Probability and UncertaintyStatistics - Methodologydescription
Reductions in natural habitats urge that we better understand species' interconnection and how biological communities respond to environmental changes. However, ecological studies of species' interactions are limited by their geographic and taxonomic focus which can distort our understanding of interaction dynamics. We focus on bird-plant interactions that refer to situations of potential fruit consumption and seed dispersal. We develop an approach for predicting species' interactions that accounts for errors in the recorded interaction networks, addresses the geographic and taxonomic biases of existing studies, is based on latent factors to increase flexibility and borrow information across species, incorporates covariates in a flexible manner to inform the latent factors, and uses a meta-analysis data set from 85 individual studies. We focus on interactions among 232 birds and 511 plants in the Atlantic Forest, and identify 5% of pairs of species with an unrecorded interaction, but posterior probability that the interaction is possible over 80%. Finally, we develop a permutation-based variable importance procedure for latent factor network models and identify that a bird's body mass and a plant's fruit diameter are important in driving the presence of species interactions, with a multiplicative relationship that exhibits both a thresholding and a matching behavior.
year | journal | country | edition | language |
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2023-05-02 | Journal of the American Statistical Association |