论文标题
使用树木收缩先验的生态社区数据的模型选择
Model selection for ecological community data using tree shrinkage priors
论文作者
论文摘要
研究人员和管理人员对生态群落进行建模,以推断出塑造物种范围,栖息地使用和共同出现的生物和非生物变量,这些变量又被用来支持管理决策和测试生态理论。最近,为生态社区的数据开发了物种分布模型。由于包含许多参数可以降低预测准确性,并且解释和交流具有挑战性,因此很难为生态社区数据的模型开发和选择生态社区数据的选择。与其他统计模型一样,多物种分布模型可能会过度参数化。正则化是一种通过收缩或消除模型参数来优化预测精度的技术。对于贝叶斯模型,先前的分布自动将参数正规化。我们提出了贝叶斯多物种分布模型的树木收缩,该模型执行正则化并减少与预测变量相关的回归系数的数量。使用此之前,通过估计较小数量的行会而不是较大的物种来减少多物种分布模型中的回归系数数量。我们使用了六种水生植被的存在示例和15种鱼类的相对丰度数据,证明了我们的树木收缩。我们的结果表明,树木收缩先验可以提高多物种分布模型的预测准确性,并使研究人员能够从生态社区数据中推断公会的数量和物种组成。
Researchers and managers model ecological communities to infer the biotic and abiotic variables that shape species' ranges, habitat use, and co-occurrence which, in turn, are used to support management decisions and test ecological theories. Recently, species distribution models were developed for and applied to data from ecological communities. Model development and selection for ecological community data is difficult because a high level of complexity is desired and achieved by including numerous parameters, which can degrade predictive accuracy and be challenging to interpret and communicate. Like other statistical models, multi-species distribution models can be overparameterized. Regularization is a technique that optimizes predictive accuracy by shrinking or eliminating model parameters. For Bayesian models, the prior distribution automatically regularizes parameters. We propose a tree shrinkage prior for Bayesian multi-species distributions models that performs regularization and reduces the number of regression coefficients associated with predictor variables. Using this prior, the number of regression coefficients in multi-species distributions models is reduced by estimation of unique regression coefficients for a smaller number of guilds rather than a larger number of species. We demonstrated our tree shrinkage prior using examples of presence-absence data for six species of aquatic vegetation and relative abundance data for 15 species of fish. Our results show that the tree shrinkage prior can increase the predictive accuracy of multi-species distribution models and enable researchers to infer the number and species composition of guilds from ecological community data.