...
首页> 外文期刊>The American Naturalist: Devoted to the Conceptual Unification of the Biological Sciences >Modeling Food Webs: Exploring Unexplained Structure Using Latent Traits
【24h】

Modeling Food Webs: Exploring Unexplained Structure Using Latent Traits

机译:食物网建模:利用潜在特征探索无法解释的结构

获取原文
获取原文并翻译 | 示例
           

摘要

Several stochastic models have tried to capture the architecture of food webs. This approach is interesting, but it is limited by the fact that different assumptions can yield similar results. To overcome this limitation, we develop a purely statistical approach. Body size in terms of an optimal ratio between prey and predator is used as explanatory variable. In 12 observed food webs, this model predicts, on average, 20% of interactions. To analyze the unexplained part, we introduce a latent term: each species is described by two latent traits, foraging and vulnerability, that represent nonmeasured characteristics of species once the optimal body size has been accounted for. The model now correctly predicts an average of 73% of links. The key features of our approach are that latent traits quantify the structure that is left unexplained by the explanatory variable and that this quantification allows a test of whether independent biological information, such as microhabitat use, camouflage, or phylogeny, explains this structure. We illustrate this method with phylogeny and find that it is linked to one or both latent traits in nine of 12 food webs. Our approach opens the door to the formulation of more complex models that can be applied to any kind of biological network.
机译:几种随机模型试图捕获食物网的体系结构。这种方法很有趣,但是由于不同的假设会产生相似的结果而受到限制。为了克服此限制,我们开发了一种纯粹的统计方法。根据猎物与食肉动物之间的最佳比例的体形被用作解释变量。在12个观察到的食物网中,该模型平均预测了20%的互动。为了分析无法解释的部分,我们引入一个潜在术语:每个物种都具有两个潜在特征,即觅食和脆弱性,一旦考虑了最佳体型,它们便代表了该物种的未经测量的特征。该模型现在可以正确预测平均73%的链接。我们方法的主要特征是潜在特征量化了解释变量无法解释的结构,并且这种量化可以测试独立的生物学信息(例如微栖息地的使用,伪装或系统发育)是否解释了这种结构。我们用系统进化论说明了这种方法,发现它与12个食物网中的9个食物网中的一个或两个潜在性状相关。我们的方法为更复杂的模型的制定打开了大门,这些模型可以应用于任何种类的生物网络。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号