Generalizing hierarchical and variation partitioning in multiple regression and canonical analyses using the rdacca.hp R package
Chinese Academy of Sciences · Beijing Botanical Garden · +5 more institutions
Abstract
Abstract Canonical analysis, a generalization of multiple regression to multiple‐response variables, is widely used in ecology. Because these models often involve many parameters (one slope per response per predictor), they pose challenges to model interpretation. Among these challenges, we lack quantitative frameworks for estimating the overall importance of single predictors in multi‐response regression models. Here we demonstrate that commonality analysis and hierarchical partitioning, widely used for both estimating predictor importance and improving the interpretation of single‐response regression models, are related and complementary frameworks that can be expanded for the analysis of multiple‐response…
Citation impact
- FWCI
- 260.75
- Percentile
- 100%
- References
- 29
Authors
4Topics & keywords
- R package
- Generalization
- Regression analysis
- Regression
- Variation (astronomy)
- Multilevel model
- Computer science
- Canonical correlation