SOTAVerified

Causal Inference

Causal inference is the task of drawing a conclusion about a causal connection based on the conditions of the occurrence of an effect.

( Image credit: Recovery of non-linear cause-effect relationships from linearly mixed neuroimaging data )

Papers

Showing 9511000 of 1722 papers

TitleStatusHype
Towards Causal Representation Learning0
Towards Clarifying the Theory of the Deconfounder0
Towards Context-Aware Emotion Recognition Debiasing from a Causal Demystification Perspective via De-confounded Training0
Towards Deconfounded Image-Text Matching with Causal Inference0
Higher order definition of causality by optimally conditioned transfer entropy0
Towards Generalizing Inferences from Trials to Target Populations0
Towards Measuring Sell Side Outcomes in Buy Side Marketplace Experiments using In-Experiment Bipartite Graph0
Towards Modeling the Interaction of Spatial-Associative Neural Network Representations for Multisensory Perception0
Towards Principled Causal Effect Estimation by Deep Identifiable Models0
Transcriptional Response of SK-N-AS Cells to Methamidophos0
Transfer Learning for Estimating Causal Effects using Neural Networks0
Interacting Treatments with Endogenous Takeup0
Revealing Treatment Non-Adherence Bias in Clinical Machine Learning Using Large Language Models0
TRIALSCOPE: A Unifying Causal Framework for Scaling Real-World Evidence Generation with Biomedical Language Models0
TSCI: two stage curvature identification for causal inference with invalid instruments0
Tutorial: Modern Theoretical Tools for Understanding and Designing Next-generation Information Retrieval System0
TV-SurvCaus: Dynamic Representation Balancing for Causal Survival Analysis0
Position: AI/ML Influencers Have a Place in the Academic Process0
Unbiased Scene Graph Generation via Two-stage Causal Modeling0
Uncertainty Assessment and False Discovery Rate Control in High-Dimensional Granger Causal Inference0
Unconditional Randomization Tests for Interference0
Graph Neural Networks for Causal Inference Under Network Confounding0
Uncovering Bias Mechanisms in Observational Studies0
Understanding Perceptual and Conceptual Fluency at a Large Scale0
Understanding the Humans Behind Online Misinformation: An Observational Study Through the Lens of the COVID-19 Pandemic0
Unfaithful Probability Distributions in Binary Triple of Causality Directed Acyclic Graph0
Simultaneous Inference for Local Structural Parameters with Random Forests0
Unifying Causal Inference and Reinforcement Learning using Higher-Order Category Theory0
Universal Decision Models0
Unveiling Causalities in SAR ATR: A Causal Interventional Approach for Limited Data0
Unveiling the Impact of Macroeconomic Policies: A Double Machine Learning Approach to Analyzing Interest Rate Effects on Financial Markets0
Uplift Modeling: from Causal Inference to Personalization0
User-Oriented Smart General AI System under Causal Inference0
Using causal inference to avoid fallouts in data-driven parametric analysis: a case study in the architecture, engineering, and construction industry0
Using Deep Autoregressive Models as Causal Inference Engines0
How and Why to Use Experimental Data to Evaluate Methods for Observational Causal Inference0
Using Machine Learning to Assess Short Term Causal Dependence and Infer Network Links0
Using Network-based Causal Inference to Detect the Sources of Contagion in the Currency Market0
Valid Causal Inference with (Some) Invalid Instruments0
Valid Inference After Causal Discovery0
Variable Selection for Causal Inference via Outcome-Adaptive Random Forest0
Variable Selection in Maximum Mean Discrepancy for Interpretable Distribution Comparison0
Variance Reduction in Bipartite Experiments through Correlation Clustering0
Variational Auto-Encoder Architectures that Excel at Causal Inference0
Variational Causal Autoencoder for Interventional and Counterfactual Queries0
Variational Deterministic Uncertainty Quantification0
Virtual Control Group: Measuring Hidden Performance Metrics0
Vision Paper: Causal Inference for Interpretable and Robust Machine Learning in Mobility Analysis0
VLUCI: Variational Learning of Unobserved Confounders for Counterfactual Inference0
Choosing with unknown causal information: Action-outcome probabilities for decision making can be grounded in causal models0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Random ForestAverage Treatment Effect Error0.96Unverified
2Balancing Linear RegressionAverage Treatment Effect Error0.93Unverified
3k-NNAverage Treatment Effect Error0.79Unverified
4CEVAEAverage Treatment Effect Error0.46Unverified
5Balancing Neural NetworkAverage Treatment Effect Error0.42Unverified
6Causal ForestAverage Treatment Effect Error0.4Unverified
7BCAUS DRAverage Treatment Effect Error0.29Unverified
8TARNetAverage Treatment Effect Error0.28Unverified
9Counterfactual Regression + WASSAverage Treatment Effect Error0.27Unverified
10MTDL-KNNAverage Treatment Effect Error0.23Unverified
#ModelMetricClaimedVerifiedStatus
1CFR WASSAverage Treatment Effect on the Treated Error0.09Unverified
2CFR MMDAverage Treatment Effect on the Treated Error0.08Unverified
3BARTAverage Treatment Effect on the Treated Error0.08Unverified
4GANITEAverage Treatment Effect on the Treated Error0.06Unverified
5BCAUSSAverage Treatment Effect on the Treated Error0.05Unverified
#ModelMetricClaimedVerifiedStatus
1BARTAverage Treatment Effect Error0.34Unverified
2OLS with separate regressors for each treatmentAverage Treatment Effect Error0.31Unverified
3Average Treatment Effect Error-0.23Unverified