BAMIFun provides Bayesian multiple imputation for functional data via low-rank penalized spline models, achieving accurate imputation and improved coverage in simulations and real datasets compared to single-imputation FPCA methods.
Double debiased machine learning nonparametric inference with continuous treatments
7 Pith papers cite this work. Polarity classification is still indexing.
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UNVERDICTED 7representative citing papers
Presents the first kernel framework for distributional treatment effect inference from adaptively collected data, using doubly robust RKHS scores, cross-fold witness functions, and sequentially normalized statistics with valid type-I error.
SHIFT combines cross-fit DML with kernel-local Welsch loss optimized via Graduated Non-Convexity and a MAD-scaled defensive OLS refit to achieve robust average dose-response estimation under localized heavy-tailed contamination while recovering outlier masks.
Introduces partial identification bounds and a double-robust SurvB-learner meta-learner for estimating robust CATE in survival analysis under informative censoring.
Derives closed-form optimal batch sampling probabilities to minimize asymptotic variance of doubly robust ATE estimator with missing outcomes, achieving lower MSE and matching full-sample precision with 75% fewer labels on simulated and real data.
Develops m-th order estimators for dose-response functions based on higher-order influence functions that attain the fastest known convergence rates under stated conditions.
New ADRF estimator jointly outputs tail shape, deep-tail quantities, and mean effect with an explicit refusal mechanism, claiming 11-25.5% MAE reductions on heavy-tailed data and correct refusal on insurance claims.
citing papers explorer
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Kernel Treatment Effects with Adaptively Collected Data
Presents the first kernel framework for distributional treatment effect inference from adaptively collected data, using doubly robust RKHS scores, cross-fold witness functions, and sequentially normalized statistics with valid type-I error.
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SHIFT: Robust Double Machine Learning for Average Dose-Response Functions under Heavy-Tailed Contamination
SHIFT combines cross-fit DML with kernel-local Welsch loss optimized via Graduated Non-Convexity and a MAD-scaled defensive OLS refit to achieve robust average dose-response estimation under localized heavy-tailed contamination while recovering outlier masks.
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Batch-Adaptive Causal Annotations
Derives closed-form optimal batch sampling probabilities to minimize asymptotic variance of doubly robust ATE estimator with missing outcomes, achieving lower MSE and matching full-sample precision with 75% fewer labels on simulated and real data.
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Stop Suppressing the Tail: Causal Inference for Extreme Events
New ADRF estimator jointly outputs tail shape, deep-tail quantities, and mean effect with an explicit refusal mechanism, claiming 11-25.5% MAE reductions on heavy-tailed data and correct refusal on insurance claims.