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Books > Professional & Technical > Civil engineering, surveying & building > Highway & traffic engineering
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Modeling Multilevel Data in Traffic Safety - A Bayesian Hierarchical Approach (Paperback)
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Modeling Multilevel Data in Traffic Safety - A Bayesian Hierarchical Approach (Paperback)
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Background: In the study of traffic system safety, statistical
models have been broadly applied to establish the relationships
between the traffic crash occurrence and various risk factors. Most
of the existing methods, such as the generalised linear regression
models, assume that each observation (e.g. a crash or a vehicle
involvement) in the estimation procedure corresponds to an
individual situation. Hence, the residuals from the models exhibit
independence. Problem: However, this "independence" assumption may
often not hold true since multilevel data structures exist
extensively because of the data collection and clustering process.
Disregarding the possible within-group correlations may lead to
production of models with unreliable parameter estimates and
statistical inferences. Method: Following a literature review of
crash prediction models, this book proposes a 5 T-level hierarchy,
viz. (Geographic region level -- Traffic site level -- Traffic
crash level -- Driver-vehicle unit level -- Vehicle-occupant level)
Time level, to establish a general form of multilevel data
structure in traffic safety analysis. To model properly the
potential between-group heterogeneity due to the multilevel data
structure, a framework of hierarchical models that explicitly
specify multilevel structure and correctly yield parameter
estimates is employed. Bayesian inference using Markov chain Monte
Carlo algorithm is developed to calibrate the proposed hierarchical
models. Two Bayesian measures, viz. the Deviance Information
Criterion and Cross-Validation Predictive Densities, are adapted to
establish the model suitability. Illustrations: The proposed method
is illustrated using two case studies in Singapore: 1) a
crash-frequency prediction model which takes into account Traffic
site level and Time level; 2) a crash-severity prediction model
which takes into account Traffic crash level and Driver-vehicle
unit level. Conclusion: Comparing the predictive abilities of the
proposed models against those of traditional methods, the study
demonstrates the importance of accounting for the within-group
correlations and illustrates the flexibilities and effectiveness of
the Bayesian hierarchical approach in modelling multilevel
structure of traffic safety data.
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