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THE STATE KEY LA... [3]
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LI ZHENNING [1]
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Journal article [3]
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2023 [1]
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A crash feature-based allocation method for boundary crash problem in spatial analysis of bicycle crashes
Journal article
Ding, Hongliang, Lu, Yuhuan, Sze, N. N., Antoniou, Constantinos, Guo, Yanyong. A crash feature-based allocation method for boundary crash problem in spatial analysis of bicycle crashes[J]. Analytic Methods in Accident Research, 2023, 37, 100251.
Authors:
Ding, Hongliang
;
Lu, Yuhuan
;
Sze, N. N.
;
Antoniou, Constantinos
;
Guo, Yanyong
Favorite
|
TC[WOS]:
9
TC[Scopus]:
9
IF:
12.5
/
12.3
|
Submit date:2023/04/03
Bicycle Crash Frequency Model
Boundary Crashes
Crash Feature-based Allocation Method
Augmented Masked Autoencoder Method
Support Vector Data Description Approach
A deep generative approach for crash frequency model with heterogeneous imbalanced data
Journal article
Ding, Hongliang, Lu, Yuhuan, Sze, N. N., Chen, Tiantian, Guo, Yanyong, Lin, Qinghai. A deep generative approach for crash frequency model with heterogeneous imbalanced data[J]. Analytic Methods in Accident Research, 2022, 34, 100212.
Authors:
Ding, Hongliang
;
Lu, Yuhuan
;
Sze, N. N.
;
Chen, Tiantian
;
Guo, Yanyong
; et al.
Favorite
|
TC[WOS]:
36
TC[Scopus]:
38
IF:
12.5
/
12.3
|
Submit date:2022/05/13
Augmented Variational Autoencoder
Crash Frequency Model
Imbalanced Crash Data
Machine Learning
Fusion convolutional neural network-based interpretation of unobserved heterogeneous factors in driver injury severity outcomes in single-vehicle crashes
Journal article
Yu, Hao, Li, Zhenning, Zhang, Guohui, Liu, Pan, Ma, Tianwei. Fusion convolutional neural network-based interpretation of unobserved heterogeneous factors in driver injury severity outcomes in single-vehicle crashes[J]. Analytic Methods in Accident Research, 2021, 30, 100157.
Authors:
Yu, Hao
;
Li, Zhenning
;
Zhang, Guohui
;
Liu, Pan
;
Ma, Tianwei
Favorite
|
TC[WOS]:
27
TC[Scopus]:
27
IF:
12.5
/
12.3
|
Submit date:2021/12/08
Deep Neural Network
Driver Injury Severity
Heterogeneity
Model Interpretation