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 676700 of 1722 papers

TitleStatusHype
T2TD: Text-3D Generation Model based on Prior Knowledge Guidance0
Dynamic Inter-treatment Information Sharing for Individualized Treatment Effects EstimationCode0
Operationalizing Counterfactual Metrics: Incentives, Ranking, and Information Asymmetry0
Covariate balancing using the integral probability metric for causal inferenceCode0
How Fragile is Relation Extraction under Entity Replacements?Code0
Causality-Aided Trade-off Analysis for Machine Learning Fairness0
The Decaying Missing-at-Random Framework: Model Doubly Robust Causal Inference with Partially Labeled Data0
uCTRL: Unbiased Contrastive Representation Learning via Alignment and Uniformity for Collaborative FilteringCode0
Estimation Beyond Data Reweighting: Kernel Method of MomentsCode0
Counterfactually Comparing Abstaining ClassifiersCode0
A Survey on Causal Discovery: Theory and Practice0
The Impact of Missing Data on Causal Discovery: A Multicentric Clinical Study0
The Hardness of Reasoning about Probabilities and Causality0
A Causal Inference Framework for Leveraging External Controls in Hybrid Trials0
Artificial intelligence to advance Earth observation: : A review of models, recent trends, and pathways forward0
Reinterpreting causal discovery as the task of predicting unobserved joint statistics0
Integrating Nearest Neighbors with Neural Network Models for Treatment Effect Estimation0
COLA: Contextualized Commonsense Causal Reasoning from the Causal Inference PerspectiveCode1
Axiomatization of Interventional Probability Distributions0
The Fundamental Limits of Structure-Agnostic Functional Estimation0
Causal Discovery with Stage Variables for Health Time Series0
String Diagrams with Factorized Densities0
Understand Waiting Time in Transaction Fee Mechanism: An Interdisciplinary PerspectiveCode0
CausalAPM: Generalizable Literal Disentanglement for NLU Debiasing0
Efficient estimation of weighted cumulative treatment effects by double/debiased machine learning0
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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