特征选择
变量(数学)
选择(遗传算法)
统计推断
推论
移植
样本量测定
医学
回归分析
结果(博弈论)
统计
人工智能
机器学习
计算机科学
数学
外科
数理经济学
数学分析
作者
Georg Heinze,Daniela Dunkler
摘要
Multivariable regression models are often used in transplantation research to identify or to confirm baseline variables which have an independent association, causally or only evidenced by statistical correlation, with transplantation outcome. Although sound theory is lacking, variable selection is a popular statistical method which seemingly reduces the complexity of such models. However, in fact, variable selection often complicates analysis as it invalidates common tools of statistical inference such as P-values and confidence intervals. This is a particular problem in transplantation research where sample sizes are often only small to moderate. Furthermore, variable selection requires computer-intensive stability investigations and a particularly cautious interpretation of results. We discuss how five common misconceptions often lead to inappropriate application of variable selection. We emphasize that variable selection and all problems related with it can often be avoided by the use of expert knowledge.
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