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- Causal Modeling for Fairness in Dynamical Systems. Creager, Elliot et al. ICML 2020
- Causal Effect Identifiability under Partial-Observability Lee, Sanghack & Bareinboim, Elias. ICML 2020
- Distinguishing Cause from Effect Using Quantiles: Bivariate Quantile Causal Discovery. Tagasovska et al. ICML 2020
- Efficient Intervention Design for Causal Discovery with Latents. Addanki et al. ICML 2020
- Fast Real-time Counterfactual Explanations. Yunxia Zhao. ICML 2020
- Latent Instrumental Variables as Priors in Causal Inference based on Independence of Cause and Mechanism. Sokolovska et al. arXiv:2007.08812
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- Counterfactual Cross-Validation: Stable Model Selection Procedure for Causal Inference Models. Saito, Yuta & Yasui, Shota. ICML 2020
- DeepMatch: Balancing Deep Covariate Representations for Causal Inference Using Adversarial Training. Kallus, Nathan. ICML 2020
- Causal Inference using Gaussian Processes with Structured Latent Confounders. Witty, Sam et al. ICML 2020
- Causal Effect Estimation and Optimal Dose Suggestions in Mobile Health. Zhu, Liangyu et al. ICML 2020
- Alleviating Privacy Attacks via Causal Learning. Tople, Shruti et al. ICML 2020
- SSCR: Iterative Language-Based Image Editing via Self-Supervised Counterfactual Reasoning. Fu, Tsu-Jui et al. EMNLP 2020
- Direct and Indirect Effects. Muller, Dominique & Judd, Charles M. Wiley StatsRef: Statistics Reference Online, 2003
- Causal Diagrams for Empirical Research. Pearl, Judea. American Statistician, 2011
- Long-Tailed Classification by Keeping the Good and Removing the Bad Momentum Causal Effect. Tang, Kaihua et al. NeurIPS 2020 [code]
- Interventional Few-Shot Learning. Yue, Zhongqi et al. NeurIPS 2020 [code]
- Causal Intervention for Weakly-Supervised Semantic Segmentation. Zhang, Dong et al. NeurIPS 2020 [code]
- Deep Structural Causal Models for Tractable Counterfactual Inference. Pawlowski, Nick et al. NeurIPS 2020 [code]
- Causality for Machine Learning. Schölkopf, Bernhard. ICLR 2020
- Explaining the Efficacy of Counterfactually Augmented Data. iclr 2021
- Accounting for Unobserved Causalonfounding in Domain Generalization. iclr 2021
- Continual Lifelong Causal Effect Inference with Real-world Evidence. iclr 2021
- Counterfactual Generative Networks. iclr 2021
- Amortized Causal Discovery Learning to Infer Ccausal Graphs from Time Series Data. iclr 2021
- Selecting Treatment Effects Models for Domain Adaptation using Causal Knowledge. iclr 2021
- Disentangled Generative Causal Representation Learning. iclr 2021
- Multi-task Causal Learning with Gaussian Processes. Aglietti et al. NeurIPS 2020
- Causal Imitation Learning with Unobserved Confounders. Zhang, Junzhe et al. NeurIPS 2020
- Differentiable Causal Discovery from Interventional Data. Brouillard et al. NeurIPS 2020
- A Causal View on Robustness of Neural Networks. Zhang, Cheng et al. NeurIPS 2020
- Group invariance principles for causal generative models. Besserve et al. AISTATS 2018
- Causal Regularization. Bahadori et al. arXiv:1702.02604
Note: All papers pdf can be found and downloaded on Bing or Google.
Source: https://github.com/FLHonker/Awesome-Neural-Logic
Contact: Yuang Liu(frankliu624@outlook.com), ECNU.