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Using information theory as a substitute for stepwise regression in ecology and behavior

机译:用信息论代替生态学和行为的逐步回归

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摘要

In ecological and behavioral research, drawing reliable conclusions from statistical models with multiple predictors is usually difficult if all predictors are simultaneously in the model. The traditional way of handling multiple predictors has been the use of threshold-based removal-introduction algorithms, that is, stepwise regression, which currently receives considerable criticism. A more recent and increasingly propagated modelling method for multiple predictors is the information theoretic (IT) approach that quantifies the relative suitability of multiple, potentially non-nested models based on a balance of model fit and the accuracy of estimates. Here, we examine three shortcomings of stepwise regression, subjective critical values, model uncertainty, and parameter estimation bias, which have been suggested to be avoided by applying information theory. We argue that, in certain circumstances, the IT approach may be sensitive to these issues as well. We point to areas where further testing and development could enhance the performance of IT methods and ultimately lead to robust inferences in behavioral ecology.
机译:在生态和行为研究中,如果所有预测变量同时在模型中,则很难从具有多个预测变量的统计模型中得出可靠的结论。处理多个预测变量的传统方法是使用基于阈值的删除引入算法,即逐步回归,目前该算法受到了广泛的批评。信息预测(IT)方法是一种用于多个预测变量的,越来越流行的建模方法,它基于模型拟合和估计的准确性来量化多个潜在的非嵌套模型的相对适用性。在这里,我们研究了逐步回归,主观临界值,模型不确定性和参数估计偏差的三个缺点,这些缺点已建议通过应用信息论来避免。我们认为,在某些情况下,IT方法也可能对这些问题敏感。我们指出了可以进行进一步测试和开发的领域,这些领域可以增强IT方法的性能并最​​终导致行为生态学的可靠推断。

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