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Kupzyk, Kevin A.; Beal, Sarah J. – Journal of Early Adolescence, 2017
In order to investigate causality in situations where random assignment is not possible, propensity scores can be used in regression adjustment, stratification, inverse-probability treatment weighting, or matching. The basic concepts behind propensity scores have been extensively described. When data are longitudinal or missing, the estimation and…
Descriptors: Probability, Longitudinal Studies, Data, Computation
Beal, Sarah J.; Kupzyk, Kevin A. – Journal of Early Adolescence, 2014
The use of propensity scores as a method to promote causality in studies that cannot use random assignment has increased dramatically since its original publication in 1983. While the utility of these approaches is important, the concepts underlying their use are complex. The purpose of this article is to provide a basic tutorial for conducting…
Descriptors: Probability, Statistical Analysis, Regression (Statistics), Statistical Bias
Osborne, Jason W. – Practical Assessment, Research & Evaluation, 2012
Logistic regression is slowly gaining acceptance in the social sciences, and fills an important niche in the researcher's toolkit: being able to predict important outcomes that are not continuous in nature. While OLS regression is a valuable tool, it cannot routinely be used to predict outcomes that are binary or categorical in nature. These…
Descriptors: Regression (Statistics), Prediction, Mathematics, Probability
Vasdekis, Vassilis G. S.; Cagnone, Silvia; Moustaki, Irini – Psychometrika, 2012
The paper proposes a composite likelihood estimation approach that uses bivariate instead of multivariate marginal probabilities for ordinal longitudinal responses using a latent variable model. The model considers time-dependent latent variables and item-specific random effects to be accountable for the interdependencies of the multivariate…
Descriptors: Geometric Concepts, Computation, Probability, Longitudinal Studies
Elder, Todd E.; Lubotsky, Darren H. – Journal of Human Resources, 2009
We present evidence that the positive relationship between kindergarten entrance age and school achievement primarily reflects skill accumulation prior to kindergarten, rather than a heightened ability to learn in school among older children. The association between achievement test scores and entrance age appears during the first months of…
Descriptors: Income, Grade Repetition, Learning Disabilities, Family Characteristics
The Dynamics and Inequality of Italian Men's Earnings: Long-Term Changes or Transitory Fluctuations?
Cappellari, Lorenzo – Journal of Human Resources, 2004
This paper provides a longitudinal perspective on changes in Italian men's earnings inequality since the late 1970s by decomposing the earnings autocovariance structure into its long-term and transitory parts. Cross-sectional earnings differentials grew over the period and the longitudinal analysis shows that such growth was determined by the…
Descriptors: Foreign Countries, Longitudinal Studies, Economic Climate, Males
Marshall, K. T.; Oliver, R. M. – 1979
The use of data on longitudinal student attendance patterns to determine variances, and hence confidence bounds, on student enrollment forecasts, in addition to finding the forecasts themselves, is demonstrated. The formulation of the enrollment model based on longitudinal student attendance patterns is described step by step, presenting the…
Descriptors: College Attendance, Conference Reports, Enrollment Projections, Higher Education