Drivers refusing to provide a breath sample (N = 483) in a roadside survey were compared with drivers agreeing to provide a sample (N = 9745) on a number of survey variables to determine whether the former were more likely to be impaired by alcohol than the latter. Significant differences in nonresp
Estimation of alcohol for nonrespondents in roadside breath surveys
β Scribed by Paul M. Hurst; John H. Darwin
- Publisher
- Elsevier Science
- Year
- 1977
- Tongue
- English
- Weight
- 288 KB
- Volume
- 9
- Category
- Article
- ISSN
- 0001-4575
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β¦ Synopsis
Almraet--This paper addresses the problem of missing data due to refusals in roadside breath surveys. To correct for bias thus introduced, estimation procedures have been developed that incorporate judgments made by interviewers concerning each driver's degree of intoxication. Such judgments are made on inRial contact, ideally before there is any knowledge of whether the detainee will be a donor or a refuser. Subsequent knowledge of results from donors is then used to develop weights for application to refusers. Development of these weights depends on choice of assumptions about contingent probability relationships among three variables: Blood alcohol concentration, judged degree of intoxication, and the decision to respond or to refuse. One of the possible alternative asstimptions is applied to the data from the U.S. 1973 National Roadside Survey, and the results are contrasted with those of the survey's author, who chose a different assumption.
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An evaluation methodology is outlined for roadside surveys of blood alcohol content in drivers, where correlative attributes are absent or a t most weakly related to the alcohol levels. The methodology is based on concepts of statistical information theory, and may be extended into a continuous mode
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