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Statistical inference / Estimation theory / Linear regression / Logistic regression / Multinomial logistic regression / Psychosocial / Mental health / Multinomial / Statistical theory / Statistics
Date: 2014-03-27 15:13:13
Statistical inference
Estimation theory
Linear regression
Logistic regression
Multinomial logistic regression
Psychosocial
Mental health
Multinomial
Statistical theory
Statistics

Nativity Status and the Relationship between Education and Health: The Role of Work-Related and Psychosocial Resources by

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