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Family studies have seen a dramatic increase in the use of statistical tools for the analysis of nominal-level variables. Such models are categorized as log-linear models often known as logit models or logistic-regression models. Despite logistic regressions growing popularity there is still confusion about the nature and proper use in family studies. The authors present a nontechnical discussion of logistic regression with illustrations and comparisons to better-known procedures such as percentaging tables and ordinary least squares regression. They contend that logistic regression can be a powerful statistical procedure when used appropriately. Nominal-level dependent variables are common in family research and logistic-regression models appropriately model the impact of predictor variables on these outcomes. With the proliferation of computer software for estimating logistic-regression models use of logistic regression is likely to increase. Though some time and attention is required to master it the advantages of logistic regression make the effort worthwhile.
Morgan et al. (Tue,) studied this question.
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