Extending Ordinal Regression with a Latent Zero-Augmented Beta Distribution

被引:0
|
作者
Kathryn M. Irvine
T. J. Rodhouse
Ilai N. Keren
机构
[1] Northern Rocky Mountain Science Center,US Geological Survey
[2] Upper Columbia Basin Network,National Park Service
[3] Washington Department of Fish and Wildlife,undefined
关键词
Beta regression; Cumulative link model; Grouped continuous; Hurdle model; Midpoint regression; Non-proportional odds; Plant abundance; Proportional odds model;
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学科分类号
摘要
Ecological abundance data are often recorded on an ordinal scale in which the lowest category represents species absence. One common example is when plant species cover is visually assessed within bounded quadrats and then assigned to pre-defined cover class categories. We present an ordinal beta hurdle model that directly models ordinal category probabilities with a biologically realistic beta-distributed latent variable. A hurdle-at-zero model allows ecologists to explore distribution (absence) and abundance processes in an integrated framework. This provides an alternative to cumulative link models when data are inconsistent with the assumption that the odds of moving into a higher category are the same for all categories (proportional odds). Graphical tools and a deviance information criterion were developed to assess whether a hurdle-at-zero model should be used for inferences rather than standard ordinal methods. Hurdle-at-zero and non-hurdle ordinal models fit to vegetation cover class data produced substantially different conclusions. The ordinal beta hurdle model yielded more precise parameter estimates than cumulative logit models, although out-of-sample predictions were similar. The ordinal beta hurdle model provides inferences directly on the latent biological variable of interest, percent cover, and supports exploration of more realistic ecological patterns and processes through the hurdle-at-zero or two-part specification. We provide JAGS code as an on-line supplement. Supplementary materials accompanying this paper appear on-line.
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页码:619 / 640
页数:21
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