[2604.04274] InferenceEvolve: Towards Automated Causal Effect Estimators through Self-Evolving AI
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Abstract page for arXiv paper 2604.04274: InferenceEvolve: Towards Automated Causal Effect Estimators through Self-Evolving AI
Computer Science > Artificial Intelligence arXiv:2604.04274 (cs) [Submitted on 5 Apr 2026] Title:InferenceEvolve: Towards Automated Causal Effect Estimators through Self-Evolving AI Authors:Can Wang, Hongyu Zhao, Yiqun Chen View a PDF of the paper titled InferenceEvolve: Towards Automated Causal Effect Estimators through Self-Evolving AI, by Can Wang and 2 other authors View PDF HTML (experimental) Abstract:Causal inference is central to scientific discovery, yet choosing appropriate methods remains challenging because of the complexity of both statistical methodology and real-world data. Inspired by the success of artificial intelligence in accelerating scientific discovery, we introduce InferenceEvolve, an evolutionary framework that uses large language models to discover and iteratively refine causal methods. Across widely used benchmarks, InferenceEvolve yields estimators that consistently outperform established baselines: against 58 human submissions in a recent community competition, our best evolved estimator lay on the Pareto frontier across two evaluation metrics. We also developed robust proxy objectives for settings without semi-synthetic outcomes, with competitive results. Analysis of the evolutionary trajectories shows that agents progressively discover sophisticated strategies tailored to unrevealed data-generating mechanisms. These findings suggest that language-model-guided evolution can optimize structured scientific programs such as causal inference, even...