A HIERARCHICAL BAYESIAN MODEL FOR PREDICTING ECOLOGICAL INTERACTIONS USING SCALED EVOLUTIONARY RELATIONSHIPS
成果类型:
Article
署名作者:
Elmasri, Mohamad; Farrell, Maxwell J.; Davies, T. Jonathan; Stephens, David A.
署名单位:
McGill University; McGill University; University of British Columbia; University of British Columbia
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/19-AOAS1296
发表日期:
2020
页码:
221-240
关键词:
statistical-analysis
biotic interactions
extinction risk
body-size
host
phylogeny
transmission
emergence
networks
patterns
摘要:
Identifying undocumented or potential future interactions among species is a challenge facing modern ecologists. Recent link prediction methods rely on trait data; however, large species interaction databases are typically sparse and covariates are limited to only a fraction of species. On the other hand, evolutionary relationships, encoded as phylogenetic trees, can act as proxies for underlying traits and historical patterns of parasite sharing among hosts. We show that, using a network-based conditional model, phylogenetic information provides strong predictive power in a recently published global database of host-parasite interactions. By scaling the phylogeny using an evolutionary model, our method allows for biological interpretation often missing from latent variable models. To further improve on the phylogeny-only model, we combine a hierarchical Bayesian latent score framework for bipartite graphs that accounts for the number of interactions per species with host dependence informed by phylogeny. Combining the two information sources yields significant improvement in predictive accuracy over each of the submodels alone. As many interaction networks are constructed from presence-only data, we extend the model by integrating a correction mechanism for missing interactions which proves valuable in reducing uncertainty in unobserved interactions.
来源URL: