Articles with public access mandates - Chao HuangLearn more
Not available anywhere: 2
Hierarchically structured transformer networks for fine-grained spatial event forecasting
C Huang*, X Wu*, C Zhang, NV Chawla
WWW 2020, 2020
Mandates: US National Science Foundation, US Department of Defense
Towards reliable social sensing in cyber-physical-social systems
C Huang, J Marshall, D Wang, M Dong
IPDPS 2016, 2016
Mandates: US National Science Foundation
Available somewhere: 43
Heterogeneous graph neural network
C Zhang, D Song, C Huang, A Swami, NV Chawla
KDD 2019, 2019
Mandates: US National Science Foundation, US Department of Defense
Hypergraph Contrastive Collaborative Filtering
L Xia, C Huang, Y Xu, J Zhao, D Yin, JX Huang
SIGIR 2022, 2022
Mandates: Natural Sciences and Engineering Research Council of Canada
Few-shot knowledge graph completion
C Zhang, H Yao, C Huang, M Jiang, Z Li, NV Chawla
AAAI 2020, 2020
Mandates: US National Science Foundation, US Department of Defense
Knowledge-enhanced hierarchical graph transformer network for multi-behavior recommendation
L Xia, C Huang, Y Xu, P Dai, X Zhang, H Yang, J Pei, L Bo
AAAI 2021, 2021
Mandates: National Natural Science Foundation of China
Traffic flow forecasting with spatial-temporal graph diffusion network
X Zhang, C Huang, Y Xu, L Xia, P Dai, L Bo, J Zhang, Y Zheng
AAAI 2021, 2021
Mandates: National Natural Science Foundation of China
Knowledge-aware coupled graph neural network for social recommendation
C Huang, H Xu, Y Xu, P Dai, L Xia, M Lu, L Bo, H Xing, X Lai, Y Ye
AAAI 2021, 2021
Mandates: National Natural Science Foundation of China
Graph meta network for multi-behavior recommendation
L Xia, Y Xu, C Huang, P Dai, L Bo
SIGIR 2021, 2021
Mandates: National Natural Science Foundation of China
Mist: A multiview and multimodal spatial-temporal learning framework for citywide abnormal event forecasting
C Huang, C Zhang, J Zhao, X Wu, D Yin, N Chawla
WWW 2019, 2019
Mandates: US National Science Foundation, US Department of Defense
Neural tensor factorization for temporal interaction learning
X Wu, B Shi, Y Dong, C Huang, NV Chawla
WSDM 2019, 2019
Mandates: US National Science Foundation, US Department of Defense
Spatio-Temporal Self-Supervised Learning for Traffic Flow Prediction
J Ji, J Wang, C Huang, J Wu, B Xu, Z Wu, J Zhang, Y Zheng
AAAI 2023, 2022
Mandates: National Natural Science Foundation of China
Multiplex behavioral relation learning for recommendation via memory augmented transformer network
L Xia*, C Huang*, Y Xu, P Dai, B Zhang, L Bo
SIGIR 2020, 2020
Mandates: National Natural Science Foundation of China
Graph-enhanced multi-task learning of multi-level transition dynamics for session-based recommendation
C Huang, J Chen, L Xia, Y Xu, P Dai, Y Chen, L Bo, J Zhao, JX Huang
AAAI 2021, 2021
Mandates: Natural Sciences and Engineering Research Council of Canada, National …
Online purchase prediction via multi-scale modeling of behavior dynamics
C Huang, X Wu, X Zhang, C Zhang, J Zhao, D Yin, NV Chawla
KDD 2019, 2019
Mandates: US National Science Foundation
On robust truth discovery in sparse social media sensing
DY Zhang, R Han, D Wang, C Huang
BigData 2016, 2016
Mandates: US National Science Foundation
Social Recommendation with Self-Supervised Metagraph Informax Network
X Long*, C Huang*, Y Xu, H Xu, PD Dai, L Xia, L Bo
CIKM 2021, 2021
Mandates: National Natural Science Foundation of China
Spatial-temporal convolutional graph attention networks for citywide traffic flow forecasting
X Zhang, C Huang, Y Xu, L Xia
CIKM 2020, 2020
Mandates: National Natural Science Foundation of China
Camel: Content-aware and meta-path augmented metric learning for author identification
C Zhang, C Huang, L Yu, X Zhang, NV Chawla
WWW 2018, 2018
Mandates: US National Science Foundation, US Department of Defense
Towards scalable and dynamic social sensing using a distributed computing framework
DY Zhang, C Zheng, D Wang, D Thain, X Mu, G Madey, C Huang
ICDCS 2017, 2017
Mandates: US National Science Foundation, US Department of Defense
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