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Auteurs principaux: Kim, Dana, Xu, Yichen, Lin, Tiffany
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2511.00318
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author Kim, Dana
Xu, Yichen
Lin, Tiffany
author_facet Kim, Dana
Xu, Yichen
Lin, Tiffany
contents Large Language Models (LLMs) offer a flexible means to generate synthetic tabular data, yet existing approaches often fail to preserve key causal parameters such as the average treatment effect (ATE). In this technical exploration, we first demonstrate that state-of-the-art synthetic data generators, both GAN- and LLM-based, can achieve high predictive fidelity while substantially misestimating causal effects. To address this gap, we propose a hybrid generation framework that combines model-based covariate synthesis (monitored via distance-to-closest-record filtering) with separately learned propensity and outcome models, thereby ensuring that (W, A, Y) triplets retain their underlying causal structure. We further introduce a synthetic pairing strategy to mitigate positivity violations and a realistic evaluation protocol that leverages unlimited synthetic samples to benchmark traditional estimators (IPTW, AIPW, substitution) under complex covariate distributions. This work lays the groundwork for LLM-powered data pipelines that support robust causal analysis. Our code is available at https://github.com/Xyc-arch/llm-synthetic-for-causal-inference.git.
format Preprint
id arxiv_https___arxiv_org_abs_2511_00318
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Technical Exploration of Causal Inference with Hybrid LLM Synthetic Data
Kim, Dana
Xu, Yichen
Lin, Tiffany
Machine Learning
Artificial Intelligence
Large Language Models (LLMs) offer a flexible means to generate synthetic tabular data, yet existing approaches often fail to preserve key causal parameters such as the average treatment effect (ATE). In this technical exploration, we first demonstrate that state-of-the-art synthetic data generators, both GAN- and LLM-based, can achieve high predictive fidelity while substantially misestimating causal effects. To address this gap, we propose a hybrid generation framework that combines model-based covariate synthesis (monitored via distance-to-closest-record filtering) with separately learned propensity and outcome models, thereby ensuring that (W, A, Y) triplets retain their underlying causal structure. We further introduce a synthetic pairing strategy to mitigate positivity violations and a realistic evaluation protocol that leverages unlimited synthetic samples to benchmark traditional estimators (IPTW, AIPW, substitution) under complex covariate distributions. This work lays the groundwork for LLM-powered data pipelines that support robust causal analysis. Our code is available at https://github.com/Xyc-arch/llm-synthetic-for-causal-inference.git.
title A Technical Exploration of Causal Inference with Hybrid LLM Synthetic Data
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2511.00318