On the Implication of Structural Zeros as Independent Variables in Regression Analysis: Applications to Alcohol Research

In alcohol studies, drinking outcomes such as number of days of any alcohol drinking (DAD) over a period of time do not precisely capture the differences among subjects in a study population of interest. For example, the value of 0 on DAD could mean that the subject was continually abstinent from dr...

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Published inJournal of Data Science Vol. 12; no. 3; pp. 439 - 460
Main Authors He, Hua, Wang, Wenjuan, Crits-Christoph, Paul, Gallop, Robert, Tang, Wan, Chen, Ding-Geng Din, Tu, Xin M
Format Journal Article
LanguageEnglish
Published China (Republic : 1949- ) 中華資料採礦協會 01.07.2014
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ISSN1683-8602
1680-743X
1683-8602
DOI10.6339/JDS.201407_12(3).0004

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Summary:In alcohol studies, drinking outcomes such as number of days of any alcohol drinking (DAD) over a period of time do not precisely capture the differences among subjects in a study population of interest. For example, the value of 0 on DAD could mean that the subject was continually abstinent from drinking such as lifetime abstainers or the subject was alcoholic, but happened not to use any alcohol during the period of interest. In statistics, zeros of the first kind are called structural zeros, to distinguish them from the sampling zeros of the second type. As the example indicates, the structural and sampling zeros represent two groups of subjects with quite different psychosocial outcomes. In the literature on alcohol use, although many recent studies have begun to explicitly account for the differences between the two types of zeros in modeling drinking variables as a response, none has acknowledged the implications of the different types of zeros when such modeling drinking variables are used as a predictor. This paper serves as the first attempt to tackle the latter issue and illustrate the importance of disentangling the structural and sampling zeros by using simulated as well as real study data.
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Wenjuan Wang, University of Rochester Medical Center, 601 Elmwood Avenue, P.O. Box 630, Rochester, NY 14642, USA
Hua He, University of Rochester Medical Center, 265 Crittenden Boulevard, CU 420630, Rochester, New York 14642-0630
Paul Crits-Christoph, University of Pennsylvania, 3535 Market St., Room 650, crits@mail.med.upenn.edu
Robert Gallop, West Chester University, 25 University Avenue, West Chester, PA 19383, rgallop@wcupa.edu
Ding-Geng (Din) Chen, University of Rochester Medical Center, 265 Crittenden Boulevard, CU 420630, Rochester, New York 14642-0630, Din_Chen@urmc.rochester.edu
Wan Tang, University of Rochester Medical Center, 265 Crittenden Boulevard, CU 420630, Rochester, New York 14642-0630, Wan_Tang@urmc.rochester.edu
Xin M. Tu, University of Rochester Medical Center, 265 Crittenden Boulevard, CU 420630, Rochester, New York 14642-0630, Xin_Tu@urmc.rochester.edu
ISSN:1683-8602
1680-743X
1683-8602
DOI:10.6339/JDS.201407_12(3).0004