CGAN-EB: A Non-parametric Empirical Bayes Method for Crash Hotspot
Identification Using Conditional Generative Adversarial Networks: A
Real-world Crash Data Study
- URL: http://arxiv.org/abs/2112.10588v1
- Date: Thu, 16 Dec 2021 21:22:56 GMT
- Title: CGAN-EB: A Non-parametric Empirical Bayes Method for Crash Hotspot
Identification Using Conditional Generative Adversarial Networks: A
Real-world Crash Data Study
- Authors: Mohammad Zarei and Bruce Hellinga and Pedram Izadpanah
- Abstract summary: This paper is the continuation of the authors previous research, where a novel non-parametric EB method for modelling crash frequency data was proposed and evaluated.
Unlike parametric approaches, there is no need for a pre-specified underlying relationship between dependent and independent variables in the proposed CGAN-EB.
The proposed methodology is now applied to a real-world data set collected for road segments from 2012 to 2017 in Washington State.
- Score: 2.3204178451683264
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The empirical Bayes (EB) method based on parametric statistical models such
as the negative binomial (NB) has been widely used for ranking sites in road
network safety screening process. This paper is the continuation of the authors
previous research, where a novel non-parametric EB method for modelling crash
frequency data data based on Conditional Generative Adversarial Networks (CGAN)
was proposed and evaluated over several simulated crash data sets. Unlike
parametric approaches, there is no need for a pre-specified underlying
relationship between dependent and independent variables in the proposed
CGAN-EB and they are able to model any types of distributions. The proposed
methodology is now applied to a real-world data set collected for road segments
from 2012 to 2017 in Washington State. The performance of CGAN-EB in terms of
model fit, predictive performance and network screening outcomes is compared
with the conventional approach (NB-EB) as a benchmark. The results indicate
that the proposed CGAN-EB approach outperforms NB-EB in terms of prediction
power and hotspot identification tests.
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