| Literature DB >> 23964957 |
Rik Crutzen1, Philippe Giabbanelli2.
Abstract
A representative sample of 2,844 Dutch adult drinkers completed a questionnaire on drinking motives and drinking behavior in January 2011. Results were classified using regressions, decision trees, and support vector machines (SVMs). Using SVMs, the mean absolute error was minimal, whereas performance on identifying binge drinkers was high. Moreover, when comparing the structure of classifiers, there were differences in which drinking motives contribute to the performance of classifiers. Thus, classifiers are worthwhile to be used in research regarding (addictive) behaviors, because they contribute to explaining behavior and they can give different insights from more traditional data analytical approaches.Keywords: classifiers; drinking motives; identifying binge drinkers; nonlinearity
Year: 2013 PMID: 23964957 DOI: 10.3109/10826084.2013.824467
Source DB: PubMed Journal: Subst Use Misuse ISSN: 1082-6084 Impact factor: 2.164