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首页> 外文期刊>Open Journal of Statistics >Adaptive Classification Methods for Predicting Transitions in the Nursing Workforce
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Adaptive Classification Methods for Predicting Transitions in the Nursing Workforce

机译:自适应分类方法,预测护理人员的过渡情况

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摘要

Earlier analyses of transitions from licensed practical nurse (LPN) to registered nurse (RN) in the North Carolina (NC) nursing workforce in terms of 11 categorical predictors were limited by not considering parsimonious classifications based on these predictors and by substantial amounts of missing data. To address these issues, we formulated adaptive classification methods. Secondary analyses of data collected by the NC State Board of Nursing were also conducted to demonstrate adaptive classification methods by modeling the occurrence of LPN-to-RN transitions in the NC nursing workforce from 2001-2013. These methods combine levels (values) for one or more categorical predictors into parsimonious classifications. Missing values for a predictor are treated as one level for that predictor so that the complete data can be used in the analyses; the missing level is imputed by combining it with other levels of a predictor. An adaptive nested classification generated the best model for predicting an LPN-to-RN transition based on three predictors in order of importance: year of first LPN licensure, work setting at transition, and age at first LPN licensure. These results demonstrate that adaptive classification can identify effective and parsimonious classifications for predicting dichotomous outcomes such as the occurrence of an LPN-to-RN transition.
机译:对于北卡罗来纳州(NC)护理人员中从执业执业护士(LPN)到注册护士(RN)的过渡,根据11种分类预测因素进行的早期分析受到限制,原因是未考虑基于这些预测因素的简约分类以及大量缺失数据。为了解决这些问题,我们制定了自适应分类方法。还对NC国家护理委员会收集的数据进行了二次分析,以通过对2001-2013年间NC护理人员中LPN向RN过渡的发生进行建模,来证明自适应分类方法。这些方法将一个或多个分类预测变量的级别(值)组合为简约分类。预测变量的缺失值被视为该预测变量的一个级别,因此可以在分析中使用完整的数据。缺失水平是通过将其与预测变量的其他水平组合来估算的。自适应嵌套分类基于重要性的三个预测因素生成了预测LPN到RN过渡的最佳模型:首次LPN许可的年份,过渡时的工作设置以及第一次LPN许可的年龄。这些结果表明,自适应分类可以识别有效和简约的分类,以预测二分结果,例如LPN向RN过渡的发生。

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