Следене
Jie Qiao
Заглавие
Позовавания
Позовавания
Година
Learning disentangled semantic representation for domain adaptation
R Cai, Z Li, P Wei, J Qiao, K Zhang, Z Hao
IJCAI: proceedings of the conference 2019, 2060, 2019
1592019
Causal discovery from discrete data using hidden compact representation
R Cai, J Qiao, K Zhang, Z Zhang, Z Hao
Advances in neural information processing systems 31, 2018
502018
Self: structural equational likelihood framework for causal discovery
R Cai, J Qiao, Z Zhang, Z Hao
Proceedings of the AAAI conference on artificial intelligence 32 (1), 2018
382018
Causal discovery with cascade nonlinear additive noise models
R Cai, J Qiao, K Zhang, Z Zhang, Z Hao
arXiv preprint arXiv:1905.09442, 2019
342019
THPs: Topological Hawkes processes for learning causal structure on event sequences
R Cai, S Wu, J Qiao, Z Hao, K Zhang, X Zhang
IEEE Transactions on Neural Networks and Learning Systems 35 (1), 479-493, 2022
242022
Identification of linear latent variable model with arbitrary distribution
Z Chen, F Xie, J Qiao, Z Hao, K Zhang, R Cai
Proceedings of the AAAI Conference on Artificial Intelligence 36 (6), 6350-6357, 2022
212022
FOM: Fourth-order moment based causal direction identification on the heteroscedastic data
R Cai, J Ye, J Qiao, H Fu, Z Hao
Neural Networks 124, 193-201, 2020
152020
Causal discovery with confounding cascade nonlinear additive noise models
J Qiao, R Cai, K Zhang, Z Zhang, Z Hao
ACM Transactions on Intelligent Systems and Technology (TIST) 12 (6), 1-28, 2021
82021
Thp: Topological hawkes processes for learning granger causality on event sequences
R Cai, S Wu, J Qiao, Z Hao, K Zhang, X Zhang
arXiv preprint arXiv:2105.10884, 2021
82021
On the probability of necessity and sufficiency of explaining graph neural networks: A lower bound optimization approach
R Cai, Y Zhu, X Chen, Y Fang, M Wu, J Qiao, Z Hao
Neural Networks 184, 107065, 2025
72025
REST: Debiased social recommendation via reconstructing exposure strategies
R Cai, F Wu, Z Li, J Qiao, W Chen, Y Hao, H Gu
ACM Transactions on Knowledge Discovery from Data 18 (2), 1-24, 2023
62023
Structural hawkes processes for learning causal structure from discrete-time event sequences
J Qiao, R Cai, S Wu, Y Xiang, K Zhang, Z Hao
arXiv preprint arXiv:2305.05986, 2023
62023
TNPAR: topological neural poisson auto-regressive model for learning granger causal structure from event sequences
Y Liu, R Cai, W Chen, J Qiao, Y Yan, Z Li, K Zhang, Z Hao
Proceedings of the AAAI Conference on Artificial Intelligence 38 (18), 20491 …, 2024
52024
On the role of entropy-based loss for learning causal structures with continuous optimization
R Cai, W Chen, J Qiao, Z Hao
arXiv preprint arXiv:2106.02835, 2021
52021
Doubly robust causal effect estimation under networked interference via targeted learning
W Chen, R Cai, Z Yang, J Qiao, Y Yan, Z Li, Z Hao
arXiv preprint arXiv:2405.03342, 2024
42024
On the role of entropy-based loss for learning causal structure with continuous optimization
W Chen, J Qiao, R Cai, Z Hao
IEEE Transactions on Neural Networks and Learning Systems, 2023
42023
Some General Identification Results for Linear Latent Hierarchical Causal Structure.
Z Chen, F Xie, J Qiao, Z Hao, R Cai
IJCAI, 3568-3576, 2023
42023
Where and how to attack? A causality-inspired recipe for generating counterfactual adversarial examples
R Cai, Y Zhu, J Qiao, Z Liang, F Liu, Z Hao
Proceedings of the AAAI Conference on Artificial Intelligence 38 (10), 11132 …, 2024
32024
Identification of causal structure in the presence of missing data with additive noise model
J Qiao, Z Chen, J Yu, R Cai, Z Hao
Proceedings of the AAAI Conference on Artificial Intelligence 38 (18), 20516 …, 2024
32024
Learning dynamic causal mechanisms from non-stationary data
R Cai, L Huang, W Chen, J Qiao, Z Hao
Applied Intelligence 53 (5), 5437-5448, 2023
32023
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