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Deep Causal Learning: Representation, Discovery and Inference

Deep Causal Learning: Representation, Discovery and Inference

7 November 2022
Zizhen Deng
Xiaolong Zheng
Hu Tian
D. Zeng
    CML
    BDL
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Papers citing "Deep Causal Learning: Representation, Discovery and Inference"

19 / 19 papers shown
Title
CAUSAL3D: A Comprehensive Benchmark for Causal Learning from Visual Data
Disheng Liu
Yiran Qiao
Wuche Liu
Yiren Lu
Yunlai Zhou
Tuo Liang
Yu Yin
Jing Ma
CML
3DV
54
0
0
06 Mar 2025
CASR: Refining Action Segmentation via Marginalizing Frame-levle Causal Relationships
Keqing Du
Xinyu Yang
Hang Chen
CML
19
1
0
21 Nov 2023
A Review and Roadmap of Deep Causal Model from Different Causal
  Structures and Representations
A Review and Roadmap of Deep Causal Model from Different Causal Structures and Representations
Hang Chen
Keqing Du
Chenguang Li
Xinyu Yang
31
2
0
02 Nov 2023
Causal reasoning in typical computer vision tasks
Causal reasoning in typical computer vision tasks
Kexuan Zhang
Qiyu Sun
Chaoqiang Zhao
Yang Tang
CML
11
5
0
26 Jul 2023
Causal Discovery from Temporal Data: An Overview and New Perspectives
Causal Discovery from Temporal Data: An Overview and New Perspectives
Chang Gong
Di Yao
Chuzhe Zhang
Wenbin Li
Jingping Bi
AI4TS
CML
8
17
0
17 Mar 2023
A Survey of Deep Causal Models and Their Industrial Applications
A Survey of Deep Causal Models and Their Industrial Applications
Zongyu Li
Xiaoning Guo
Siwei Qiang
CML
AI4CE
11
7
0
19 Sep 2022
An improved neural network model for treatment effect estimation
An improved neural network model for treatment effect estimation
Niki Kiriakidou
Christos Diou
CML
30
3
0
23 May 2022
Improving Multi-Task Generalization via Regularizing Spurious
  Correlation
Improving Multi-Task Generalization via Regularizing Spurious Correlation
Ziniu Hu
Zhe Zhao
Xinyang Yi
Tiansheng Yao
Lichan Hong
Yizhou Sun
Ed H. Chi
OOD
LRM
61
29
0
19 May 2022
ML4C: Seeing Causality Through Latent Vicinity
ML4C: Seeing Causality Through Latent Vicinity
Haoyue Dai
Rui Ding
Yuanyuan Jiang
Shi Han
Dongmei Zhang
OOD
27
8
0
01 Oct 2021
Unsupervised Causal Binary Concepts Discovery with VAE for Black-box
  Model Explanation
Unsupervised Causal Binary Concepts Discovery with VAE for Black-box Model Explanation
Thien Q. Tran
Kazuto Fukuchi
Youhei Akimoto
Jun Sakuma
CML
14
10
0
09 Sep 2021
NTS-NOTEARS: Learning Nonparametric DBNs With Prior Knowledge
NTS-NOTEARS: Learning Nonparametric DBNs With Prior Knowledge
Xiangyuan Sun
Oliver Schulte
Guiliang Liu
Pascal Poupart
CML
BDL
33
18
0
09 Sep 2021
Relating Graph Neural Networks to Structural Causal Models
Relating Graph Neural Networks to Structural Causal Models
Matej Zečević
D. Dhami
Petar Velickovic
Kristian Kersting
AI4CE
CML
37
53
0
09 Sep 2021
Causal Effect Inference for Structured Treatments
Causal Effect Inference for Structured Treatments
Jean Kaddour
Yuchen Zhu
Qi Liu
Matt J. Kusner
Ricardo M. A. Silva
CML
160
49
0
03 Jun 2021
Instance-wise Causal Feature Selection for Model Interpretation
Instance-wise Causal Feature Selection for Model Interpretation
Pranoy Panda
Sai Srinivas Kancheti
V. Balasubramanian
CML
27
14
0
26 Apr 2021
Estimating Average Treatment Effects via Orthogonal Regularization
Estimating Average Treatment Effects via Orthogonal Regularization
Tobias Hatt
Stefan Feuerriegel
CML
148
35
0
21 Jan 2021
Causal Adversarial Network for Learning Conditional and Interventional
  Distributions
Causal Adversarial Network for Learning Conditional and Interventional Distributions
Raha Moraffah
Bahman Moraffah
Mansooreh Karami
A. Raglin
Huan Liu
OOD
GAN
CML
44
21
0
26 Aug 2020
Explaining Visual Models by Causal Attribution
Explaining Visual Models by Causal Attribution
Álvaro Parafita
Jordi Vitrià
CML
FAtt
54
35
0
19 Sep 2019
Learning Representations for Counterfactual Inference
Learning Representations for Counterfactual Inference
Fredrik D. Johansson
Uri Shalit
David Sontag
CML
OOD
BDL
205
713
0
12 May 2016
Dropout as a Bayesian Approximation: Representing Model Uncertainty in
  Deep Learning
Dropout as a Bayesian Approximation: Representing Model Uncertainty in Deep Learning
Y. Gal
Zoubin Ghahramani
UQCV
BDL
245
9,042
0
06 Jun 2015
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