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Cheney, Marshall K.; Vesely, Sara K.; Aspy, Cheryl B.; Oman, Roy F.; Tolma, Eleni L. – Journal of Alcohol and Drug Education, 2018
The prospective associations between negative life events (NLEs) and adolescent alcohol use was examined using the Youth Asset Study. Participants (n = 1040 adolescents, mean age = 15.8 years) completed annual interviews which included a life events scale and alcohol use in the last 30 days. Family structure and parent education were assessed as…
Descriptors: Adolescent Attitudes, Adolescent Development, Drinking, Correlation
Stuart, Elizabeth A.; Green, Kerry M. – Developmental Psychology, 2008
Matching methods such as nearest neighbor propensity score matching are increasingly popular techniques for controlling confounding in nonexperimental studies. However, simple k:1 matching methods, which select k well-matched comparison individuals for each treated individual, are sometimes criticized for being overly restrictive and discarding…
Descriptors: Marijuana, Correlation, Adolescents, Adolescent Development
Foshee, Vangie A.; Ennett, Susan T.; Bauman, Karl E.; Granger, Douglas A.; Benefield, Thad; Suchindran, Chirayath; Hussong, Andrea M.; Karriker-Jaffe, Katherine J.; DuRant, Robert H. – Journal of Early Adolescence, 2007
The authors test biosocial models that posit interactions between biological variables (testosterone, estradiol, pubertal status, and pubertal timing) and social context variables (family, peer, school, and neighborhood) in predicting adolescent involvement with cigarettes and alcohol in a sample of 409 adolescents in Grades 6 and 8. Models…
Descriptors: Correlation, Context Effect, Grade 6, Social Environment

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