首页> 外文期刊>Journal of youth and adolescence >Why missing data matter in the longitudinal study of adolescent development: Using the 4-H study to understand the uses of different missing data methods
【24h】

Why missing data matter in the longitudinal study of adolescent development: Using the 4-H study to understand the uses of different missing data methods

机译:为什么缺失数据在青少年发育的纵向研究中很重要:使用4-H研究了解不同缺失数据方法的用途

获取原文
获取原文并翻译 | 示例
           

摘要

The study of adolescent development rests on methodologically appropriate collection and interpretation of longitudinal data. While all longitudinal studies of adolescent development involve missing data, the methods to treat missingness that have been recommended most often focus on missing data from cross-sectional studies. The problems of missing data in longitudinal studies are not described well, there are not many statistical software programs developed for researchers to use, and there are no longitudinal empirical examples involving adolescent development that show the extent to which different missing data procedures can yield different results. Data from the first three waves of the 4-H Study of Positive Youth Development were used to provide such an illustration. The sample contains 2,265 participants (56.7% females) who were in Grade 5 at Wave 1, in Grade 6 at Wave 2, and in Grade 7 at Wave 3, and varied in race, ethnicity, socioeconomic status, family structure, rural-urban location, and geographic region. The results showed that three missing data techniques, i. e., listwise deletion, direct maximum likelihood (DirML), and multiple imputation (MI), did not yield comparable results for research questions assessing different aspects of development (i. e., change over time or prediction effects). The results indicated also that listwise deletion should not be used. Instead, both DirML and MI methods should be used to determine if and how results change when these procedures are employed.
机译:对青少年发育的研究取决于对纵向数据的方法学上适当的收集和解释。尽管所有关于青少年发育的纵向研究都涉及缺失数据,但推荐的治疗缺失的方法通常侧重于横断面研究中的缺失数据。纵向研究中缺失数据的问题没有得到很好的描述,没有太多可供研究人员使用的统计软件程序,也没有涉及青春期发育的纵向经验示例表明不同的缺失数据程序可以产生不同结果的程度。来自4-H积极青年发展研究的前三波的数据被用来提供这样的例证。该样本包含2,265名参与者(56.7%的女性),他们分别在第一波的5年级,第二波的6年级和第三波的7年级,并且在种族,族裔,社会经济地位,家庭结构,城乡之间存在差异位置和地理区域。结果表明,三种缺失的数据技术是:例如,逐行删除,直接最大似然(DirML)和多重插补(MI),对于评估发展的不同方面(即随着时间的变化或预测效果)的研究问题并没有产生可比的结果。结果还表明,不应使用按列表删除。相反,应使用DirML和MI方法来确定采用这些过程时结果是否以及如何改变。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号