Application of Fractal theory for crash rate prediction: Insights from random parameters and latent class tobit models.
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[1] Akshay Vij,et al. Incorporating the influence of latent modal preferences on travel mode choice behavior , 2013 .
[2] Andrew P Tarko,et al. Tobit analysis of vehicle accident rates on interstate highways. , 2008, Accident; analysis and prevention.
[3] Konstantina Gkritza,et al. A latent class analysis of single-vehicle motorcycle crash severity outcomes , 2014 .
[4] Gudmundur F. Ulfarsson,et al. A heterogeneity-in-means count model for evaluating the effects of interchange type on heterogeneous influences of interstate geometrics on crash frequencies , 2014 .
[5] Minho Park,et al. Analysis of Severe Injury Accident Rates on Interstate Highways Using a Random Parameter Tobit Model , 2017 .
[6] B. Mandelbrot. How Long Is the Coast of Britain? Statistical Self-Similarity and Fractional Dimension , 1967, Science.
[7] Omar Bagdadi,et al. Assessing safety critical braking events in naturalistic driving studies , 2013 .
[8] Mohamed M. Ahmed,et al. Assessment of Interaction of Crash Occurrence, Mountainous Freeway Geometry, Real-Time Weather, and Traffic Data , 2012 .
[9] F. Mannering,et al. The effect of passengers on driver-injury severities in single-vehicle crashes: A random parameters heterogeneity-in-means approach , 2017 .
[10] Andrew P Tarko,et al. Markov switching negative binomial models: an application to vehicle accident frequencies. , 2008, Accident; analysis and prevention.
[11] Nataliya V Malyshkina,et al. Markov switching multinomial logit model: An application to accident-injury severities. , 2008, Accident; analysis and prevention.
[12] Fred L. Mannering,et al. The heterogeneous effects of guardian supervision on adolescent driver-injury severities: A finite-mixture random-parameters approach , 2013 .
[13] Brian L. Smith,et al. Freeway Accident Likelihood Prediction Using a Panel Data Analysis Approach , 2007 .
[14] Ahmed E. Radwan,et al. Modeling traffic accident occurrence and involvement. , 2000, Accident; analysis and prevention.
[15] F. Mannering,et al. Determinants of bicyclist injury severities in bicycle-vehicle crashes: A random parameters approach with heterogeneity in means and variances , 2017 .
[16] B. Muthén,et al. Deciding on the Number of Classes in Latent Class Analysis and Growth Mixture Modeling: A Monte Carlo Simulation Study , 2007 .
[17] Chandra R. Bhat,et al. Unobserved heterogeneity and the statistical analysis of highway accident data , 2016 .
[18] Young-Jun Kweon,et al. Driver injury severity: an application of ordered probit models. , 2002, Accident; analysis and prevention.
[19] Mohamed Abdel-Aty,et al. A Bayesian spatial random parameters Tobit model for analyzing crash rates on roadway segments. , 2017, Accident; analysis and prevention.
[20] Chandra R. Bhat,et al. A latent segmentation based generalized ordered logit model to examine factors influencing driver injury severity , 2014 .
[21] D. Nagin. Group-based modeling of development , 2005 .
[22] Felix Famoye,et al. On the Generalized Poisson Regression Model with an Application to Accident Data , 2004, Journal of Data Science.
[23] Fred L. Mannering,et al. Occupant injury severities in hybrid-vehicle involved crashes: A random parameters approach with heterogeneity in means and variances , 2017 .
[24] Fred L Mannering,et al. A note on modeling vehicle accident frequencies with random-parameters count models. , 2009, Accident; analysis and prevention.
[25] Suren Chen,et al. Refined-scale panel data crash rate analysis using random-effects tobit model. , 2014, Accident; analysis and prevention.
[26] Ezra Hauer. Identification of Sites with Promise , 1996 .
[27] Peter T. Savolainen,et al. Mixed logit analysis of bicyclist injury severity resulting from motor vehicle crashes at intersection and non-intersection locations. , 2011, Accident; analysis and prevention.
[28] C J O'Donnell,et al. Predicting the severity of motor vehicle accident injuries using models of ordered multiple choice. , 1996, Accident; analysis and prevention.
[29] A H Rhodes,et al. Speed, speed limits and road traffic accidents under free flow conditions. , 1999, Accident; analysis and prevention.
[30] Neeraj Saxena,et al. A PRELIMINARY INVESTIGATION OF THE RELATIONSHIPS BETWEEN 1 HISTORICAL CRASH AND NATURALISTIC DRIVING 2 3 , 2017 .
[31] Gudmundur F. Ulfarsson,et al. Random parameter models of interstate crash frequencies by severity, number of vehicles involved, collision and location type. , 2013, Accident; analysis and prevention.
[32] F Mannering,et al. Effect of roadway geometrics and environmental factors on rural freeway accident frequencies. , 1995, Accident; analysis and prevention.
[33] Panagiotis Ch. Anastasopoulos. Random parameters multivariate tobit and zero-inflated count data models: addressing unobserved and zero-state heterogeneity in accident injury-severity rate and frequency analysis , 2016 .
[34] Gudmundur F. Ulfarsson,et al. Driver-injury severity in single-vehicle crashes in California: A mixed logit analysis of heterogeneity due to age and gender. , 2013, Accident; analysis and prevention.
[35] Nicholas J Garber,et al. Incorporating Crash Risk in Selecting Congestion-Mitigation Strategies: Hampton Roads Area (Virginia) Case Study , 2001 .
[36] Larry Head,et al. Surrogate Safety Measures from Traffic Simulation Models , 2003 .
[37] K. Train. Halton Sequences for Mixed Logit , 2000 .
[38] Griselda López,et al. Analysis of traffic accidents on rural highways using Latent Class Clustering and Bayesian Networks. , 2013, Accident; analysis and prevention.
[39] Chandra R. Bhat,et al. A count data model with endogenous covariates: Formulation and application to roadway crash frequency at intersections , 2014 .
[40] S. Washington,et al. Statistical and Econometric Methods for Transportation Data Analysis , 2010 .
[41] J. Halton. On the efficiency of certain quasi-random sequences of points in evaluating multi-dimensional integrals , 1960 .
[42] Soyoung Ahn,et al. Impact of traffic oscillations on freeway crash occurrences. , 2010, Accident; analysis and prevention.
[43] Dominique Lord,et al. Application of finite mixture models for vehicle crash data analysis. , 2009, Accident; analysis and prevention.
[44] Fred L Mannering,et al. Highway accident severities and the mixed logit model: an exploratory empirical analysis. , 2008, Accident; analysis and prevention.
[45] Monica Menendez,et al. Exploring the application of latent class cluster analysis for investigating pedestrian crash injury severities in Switzerland. , 2015, Accident; analysis and prevention.
[46] J. Tobin. Estimation of Relationships for Limited Dependent Variables , 1958 .
[47] Alexander Skabardonis,et al. Impact of traffic states on freeway crash involvement rates. , 2013, Accident; analysis and prevention.
[48] Vinayak Dixit,et al. Long-Range Dependence of Traffic Flow and Speed of a Motorway: Dynamics and Correlation with Historical Incidents , 2017 .
[49] Chao Wang,et al. Road Traffic Congestion and Crash Severity: Econometric Analysis Using Ordered Response Models , 2010 .
[50] Fred L. Mannering,et al. The analysis of vehicle crash injury-severity data: A Markov switching approach with road-segment heterogeneity , 2014 .
[51] Liping Fu,et al. A latent class modeling approach for identifying vehicle driver injury severity factors at highway-railway crossings. , 2012, Accident; analysis and prevention.
[52] H. E. Hurst,et al. Long-Term Storage Capacity of Reservoirs , 1951 .
[53] Nataliya V Malyshkina,et al. Zero-state Markov switching count-data models: an empirical assessment. , 2008, Accident; analysis and prevention.
[54] Fred L Mannering,et al. A study of factors affecting highway accident rates using the random-parameters tobit model. , 2012, Accident; analysis and prevention.
[55] Kaan Ozbay,et al. Quantifying effects of ramp metering on freeway safety. , 2006, Accident; analysis and prevention.
[56] John A. Belward,et al. Fractal dimensions for rainfall time series , 1999 .
[57] Vinayak Dixit,et al. Evaluation of Fluctuating Speed and Lateral Movement of Vehicles: Comparison Between Mixed Traffic and Homogeneous Traffic , 2016 .
[58] James G. Scott,et al. Modeling unobserved heterogeneity using finite mixture random parameters for spatially correlated discrete count data , 2016 .
[59] Cheol Oh,et al. Estimation of rear-end crash potential using vehicle trajectory data. , 2010, Accident; analysis and prevention.
[60] David A. Hensher,et al. A latent class model for discrete choice analysis: contrasts with mixed logit , 2003 .
[61] Yajie Zou,et al. Application of finite mixture of negative binomial regression models with varying weight parameters for vehicle crash data analysis. , 2013, Accident; analysis and prevention.
[62] Fred L Mannering,et al. A multivariate tobit analysis of highway accident-injury-severity rates. , 2012, Accident; analysis and prevention.
[63] C. Bhat. Quasi-random maximum simulated likelihood estimation of the mixed multinomial logit model , 2001 .