×
验证码:
换一张
Forgotten Password?
Stay signed in
Login With UMPASS
English
|
繁體
Login With UMPASS
Log In
ALL
ORCID
TI
AU
PY
SU
KW
TY
JN
DA
IN
PB
FP
ST
SM
Study Hall
Image search
Paste the image URL
Home
Faculties & Institutes
Scholars
Publications
Subjects
Statistics
News
Search in the results
Faculties & Institutes
Faculty of Scie... [13]
THE STATE KEY LA... [3]
Authors
CHENGZHONG XU [3]
GONG ZHIGUO [1]
CHEN LONG [1]
ZHANG LIMING [1]
HE XIAOXI [1]
Document Type
Journal article [10]
Conference paper [4]
Book chapter [1]
Date Issued
2024 [1]
2023 [2]
2022 [6]
2021 [2]
2020 [1]
2019 [2]
More...
Language
英語English [15]
Source Publication
IEEE Access [3]
APPLIED INTELLIG... [1]
Applied Intellig... [1]
Expert Systems w... [1]
IEEE TRANSACTION... [1]
IEEE Transaction... [1]
More...
Indexed By
SCIE [9]
CPCI-S [3]
SSCI [1]
Funding Organization
Funding Project
×
Knowledge Map
UM
Start a Submission
Submissions
Unclaimed
Claimed
Attach Fulltext
Bookmarks
Browse/Search Results:
1-10 of 15
Help
Selected(
0
)
Clear
Items/Page:
5
10
15
20
25
30
35
40
45
50
55
60
65
70
75
80
85
90
95
100
Sort:
Select
Issue Date Ascending
Issue Date Descending
Journal Impact Factor Ascending
Journal Impact Factor Descending
WOS Cited Times Ascending
WOS Cited Times Descending
Submit date Ascending
Submit date Descending
Title Ascending
Title Descending
Author Ascending
Author Descending
FedGTP: Exploiting Inter-Client Spatial Dependency in Federated Graph-based Traffic Prediction
Conference paper
Yang, Linghua, Chen, Wantong, He, Xiaoxi, Wei, Shuyue, Xu, Yi, Zhou, Zimu, Tong, Yongxin. FedGTP: Exploiting Inter-Client Spatial Dependency in Federated Graph-based Traffic Prediction[C], New York, NY, USA:Association for Computing Machinery, 2024, 6105–6116.
Authors:
Yang, Linghua
;
Chen, Wantong
;
He, Xiaoxi
;
Wei, Shuyue
;
Xu, Yi
; et al.
Favorite
|
TC[Scopus]:
0
|
Submit date:2024/09/11
Federated Learning
Traffic Prediction
Spatial-temporal Graph Neural Network
Cross-City Multi-Granular Adaptive Transfer Learning for Traffic Flow Prediction
Journal article
Mo, Jiqian, Gong, Zhiguo. Cross-City Multi-Granular Adaptive Transfer Learning for Traffic Flow Prediction[J]. IEEE Transactions on Knowledge and Data Engineering, 2023, 35(11), 11246-11258.
Authors:
Mo, Jiqian
;
Gong, Zhiguo
Favorite
|
TC[WOS]:
6
TC[Scopus]:
4
IF:
8.9
/
8.8
|
Submit date:2023/12/04
Attention
Meta-learning
Traffic Flow Prediction
Transfer Learning
Multi-view dynamic graph convolution neural network for traffic flow prediction
Journal article
Huang,Xiaohui, Ye,Yuming, Yang,Xiaofei, Xiong,Liyan. Multi-view dynamic graph convolution neural network for traffic flow prediction[J]. Expert Systems with Applications, 2023, 222, 119779.
Authors:
Huang,Xiaohui
;
Ye,Yuming
;
Yang,Xiaofei
;
Xiong,Liyan
Favorite
|
TC[WOS]:
25
TC[Scopus]:
27
IF:
7.5
/
7.6
|
Submit date:2023/08/03
Dynamic Fusion
Graph Convolution Network
Multi-view Encoder–decoders
Traffic Flow Prediction
A multi-mode traffic flow prediction method with clustering based attention convolution LSTM
Journal article
Huang, Xiaohui, Ye, Yuming, Wang, Cheng, Yang, Xiaofei, Xiong, Liyan. A multi-mode traffic flow prediction method with clustering based attention convolution LSTM[J]. Applied Intelligence, 2022, 52(13), 14773-14786.
Authors:
Huang, Xiaohui
;
Ye, Yuming
;
Wang, Cheng
;
Yang, Xiaofei
;
Xiong, Liyan
Favorite
|
TC[WOS]:
3
TC[Scopus]:
10
IF:
3.4
/
3.9
|
Submit date:2022/05/13
Attention Mechanism
Encoder-decoder
Multi-mode
Spatial-temporal Data
Traffic Flow Prediction
Multi-mode dynamic residual graph convolution network for traffic flow prediction
Journal article
Huang, Xiaohui, Ye, Yuming, Ding, Weihua, Yang, Xiaofei, Xiong, Liyan. Multi-mode dynamic residual graph convolution network for traffic flow prediction[J]. INFORMATION SCIENCES, 2022, 609, 548-564.
Authors:
Huang, Xiaohui
;
Ye, Yuming
;
Ding, Weihua
;
Yang, Xiaofei
;
Xiong, Liyan
Favorite
|
TC[WOS]:
22
TC[Scopus]:
23
IF:
0
/
0
|
Submit date:2022/08/02
Graph Convolution Network
Multi-mode Fusion
Spatio-temporal Data
Traffic Flow Prediction
Adaptive traffic signal management method combining deep learning and simulation
Journal article
Mok, Kawai, Zhang, Liming. Adaptive traffic signal management method combining deep learning and simulation[J]. Multimedia Tools and Applications, 2022, 83(5), 15439-15459.
Authors:
Mok, Kawai
;
Zhang, Liming
Favorite
|
TC[WOS]:
2
TC[Scopus]:
2
IF:
3.0
/
2.9
|
Submit date:2022/08/05
Deep Learning Based Vehicle Detection
Adaptive Traffic Signal Management
Traffic Data Acquisition
Traffic Flow Prediction
Vehicle Trajectory Prediction in Connected Environments via Heterogeneous Context-Aware Graph Convolutional Networks
Journal article
Lu, Yuhuan, Wang, Wei, Hu, Xiping, Xu, Pengpeng, Zhou, Shengwei, Cai, Ming. Vehicle Trajectory Prediction in Connected Environments via Heterogeneous Context-Aware Graph Convolutional Networks[J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 24(8), 8452 - 8464.
Authors:
Lu, Yuhuan
;
Wang, Wei
;
Hu, Xiping
;
Xu, Pengpeng
;
Zhou, Shengwei
; et al.
Favorite
|
TC[WOS]:
26
TC[Scopus]:
26
IF:
7.9
/
8.3
|
Submit date:2022/08/05
Trajectory
Vehicle Dynamics
Predictive Models
Convolutional Neural Networks
Roads
Feature Extraction
Dynamics
Traffic Big Data
Graph Neural Networks
Trajectory Prediction
Connected Vehicles
Interaction Context
Multi-step Coupled Graph Convolution with Temporal-Attention for Traffic Flow Prediction
Journal article
Huang, Xiaohui, Ye, Yuming, Yang, Xiaofei, Xiong, Liyan. Multi-step Coupled Graph Convolution with Temporal-Attention for Traffic Flow Prediction[J]. IEEE Access, 2022, 10, 48179-48192.
Authors:
Huang, Xiaohui
;
Ye, Yuming
;
Yang, Xiaofei
;
Xiong, Liyan
Favorite
|
TC[WOS]:
5
TC[Scopus]:
7
IF:
3.4
/
3.7
|
Submit date:2022/05/17
Graph Convolutional Network
Multi-step Attention
Traffic Flow Prediction
A time-dependent attention convolutional LSTM method for traffic flow prediction
Journal article
Xiaohui Huang, Jie Tang, Xiaofei Yang, Liyan Xiong. A time-dependent attention convolutional LSTM method for traffic flow prediction[J]. APPLIED INTELLIGENCE, 2022, 52(15), 17371–17386.
Authors:
Xiaohui Huang
;
Jie Tang
;
Xiaofei Yang
;
Liyan Xiong
Favorite
|
TC[WOS]:
10
TC[Scopus]:
11
IF:
3.4
/
3.9
|
Submit date:2022/05/17
Attention Mechanism
Convolutional Lstm
Spatio-temporal Data
Traffic Flow Prediction
Multi-feature Urban Traffic Prediction Based on Unconstrained Graph Attention Network
Conference paper
Hangtao He, Kejiang Ye, Cheng-Zhong Xu. Multi-feature Urban Traffic Prediction Based on Unconstrained Graph Attention Network[C]:IEEE, 2021, 1409-1417.
Authors:
Hangtao He
;
Kejiang Ye
;
Cheng-Zhong Xu
Favorite
|
TC[WOS]:
6
TC[Scopus]:
8
|
Submit date:2022/05/13
Traffic Prediction
Graph Neural Networks
Interpretability