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Comparison of Bayesian model averaging and stepwise methods for model selection in logistic regression.

机译:Logistic回归中贝叶斯模型平均和逐步选择模型的比较。

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Logistic regression is the standard method for assessing predictors of diseases. In logistic regression analyses, a stepwise strategy is often adopted to choose a subset of variables. Inference about the predictors is then made based on the chosen model constructed of only those variables retained in that model. This method subsequently ignores both the variables not selected by the procedure, and the uncertainty due to the variable selection procedure. This limitation may be addressed by adopting a Bayesian model averaging approach, which selects a number of all possible such models, and uses the posterior probabilities of these models to perform all inferences and predictions. This study compares the Bayesian model averaging approach with the stepwise procedures for selection of predictor variables in logistic regression using simulated data sets and the Framingham Heart Study data. The results show that in most cases Bayesian model averaging selects the correct model and out-performs stepwise approaches at predicting an event of interest.
机译:Logistic回归是评估疾病预测因子的标准方法。在逻辑回归分析中,通常采用逐步策略来选择变量的子集。然后,基于仅由保留在该模型中的那些变量构成的所选模型进行关于预测变量的推断。随后,该方法将忽略该过程未选择的变量以及变量选择过程导致的不确定性。可以通过采用贝叶斯模型平均方法来解决此限制,该方法选择所有所有可能的此类模型,并使用这些模型的后验概率来执行所有推断和预测。这项研究使用模拟数据集和Framingham心脏研究数据,将贝叶斯模型平均方法与逐步回归选择Logistic回归中预测变量的方法进行了比较。结果表明,在大多数情况下,贝叶斯模型平均可以选择正确的模型,并且在预测感兴趣事件时胜过逐步方法。

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