McCrea Rachel S, Morgan Byron J T
National Centre for Statistical Ecology, School of Mathematics, Statistics and Actuarial Science, University of Kent, Canterbury CT2 7NF, UK.
Biometrics. 2011 Mar;67(1):234-41. doi: 10.1111/j.1541-0420.2010.01421.x.
Although multistate mark-recapture models are recognized as important, they lack a simple model-selection procedure. This article proposes and evaluates a step-up approach to select appropriate models for multistate mark-recapture data using score tests. Only models supported by the data require fitting, so that over-complicated model structures with too many parameters do not need to be considered. Typically only a small number of models are fitted, and the procedure is also able to identify parameter-redundant and near-redundant models. The good performance of the technique is demonstrated using simulation, and the approach is illustrated on a three-region Canada goose data set. In this case, it identifies a new model that is much simpler than the best model previously considered for this application.
尽管多状态标记重捕模型被认为很重要,但它们缺乏一个简单的模型选择程序。本文提出并评估了一种逐步增加的方法,用于使用得分检验为多状态标记重捕数据选择合适的模型。只有数据支持的模型才需要进行拟合,这样就无需考虑具有过多参数的过于复杂的模型结构。通常只拟合少数几个模型,并且该程序还能够识别参数冗余和近乎冗余的模型。通过模拟证明了该技术的良好性能,并在一个包含三个区域的加拿大鹅数据集上展示了该方法。在这种情况下,它识别出了一个比之前针对此应用所考虑的最佳模型简单得多的新模型。