Estimating the variance in before-after studies |
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Authors: | Zhirui Ye [Author Vitae] Dominique Lord [Author Vitae] |
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Affiliation: | a Western Transportation Institute, Montana State University, P O Box 174250, Bozeman, MT 59717, USA b Zachry Department of Civil Engineering, Texas A&M University, 3136 TAMU, College Station, TX 77843, USA |
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Abstract: | ProblemTo simplify the computation of the variance in before-after studies, it is generally assumed that the observed crash data for each entity (or observation) are Poisson distributed. Given the characteristics of this distribution, the observed value (xi) for each entity is implicitly made equal to its variance. However, the variance should be estimated using the conditional properties of this observed value (defined as a random variable), that is, f(xi|μi), since the mean of the observed value is in fact unknown.MethodParametric and non-parametric bootstrap methods were investigated to evaluate the conditional assumption using simulated and observed data.ResultsThe results of this study show that observed data should not be used as a substitute for the variance, even if the entities are assumed to be Poisson distributed. Consequently, the estimated variance for the parameters under study in traditional before-after studies is likely to be underestimated.ConclusionsThe proposed methods offer more accurate approaches for estimating the variance in before-after studies. |
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Keywords: | Before-after study Variance estimation Bootstrap Resampling Non-parametric |
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