G2TT
来源类型Publication
来源IDBaby FACES 2009
Imputing Attendance Data in a Longitudinal Multilevel Panel Data Set
Jaime Thomas; Pia Caronongan; Bethany Simard; Cheri A. Vogel; and Kimberly Boller
发表日期2015-04-09
出版者Washington, DC: U.S. Department of Health and Human Services, Administration for Children and Families, Office of Planning, Research and Evaluation
出版年2015
语种英语
概述Given the intensive demands that collecting attendance data places on program staff, it can often be challenging to collect and might result in a fair amount of missing data, which can compromise the reliability and validity of attendance estimates.",
摘要

Key Findings:

  • When the desired estimates are simple univariate descriptive statistics, single imputation techniques such as mean replacement can perform as well as more complicated techniques such as multiple imputation.

Given the intensive demands that collecting attendance data places on program staff, it can often be challenging to collect and might result in a fair amount of missing data, which can compromise the reliability and validity of attendance estimates. Little is known about which methods for handing missing data generate the most accurate estimates of attendance. To address this issue, we simulated data on children’s weekly child care center attendance over the course of a year and compared different methods of estimating attendance. The results indicate that when data are missing on one variable and at one level only, complete case analysis produces accurate estimates of average weekly attendance, regardless of the amount or type of missingness. When estimating total yearly attendance, complete case analysis is inaccurate, but both mean replacement and multiple imputation produce reasonable estimates. A lesson learned from this exercise is that when the desired estimates are simple univariate descriptive statistics, single imputation techniques such as mean replacement can perform as well as more complicated techniques such as multiple imputation.

URLhttps://www.mathematica.org/our-publications-and-findings/publications/imputing-attendance-data-in-a-longitudinal-multilevel-panel-data-set
来源智库Mathematica Policy Research (United States)
资源类型智库出版物
条目标识符http://119.78.100.153/handle/2XGU8XDN/488051
推荐引用方式
GB/T 7714
Jaime Thomas,Pia Caronongan,Bethany Simard,et al. Imputing Attendance Data in a Longitudinal Multilevel Panel Data Set. 2015.
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