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Variational Uncertainty Decomposition for In-Context Learning

Machine Learning 2025-12-08 v3 Machine Learning

Abstract

As large language models (LLMs) gain popularity in conducting prediction tasks in-context, understanding the sources of uncertainty in in-context learning becomes essential to ensuring reliability. The recent hypothesis of in-context learning performing predictive Bayesian inference opens the avenue for Bayesian uncertainty estimation, particularly for decomposing uncertainty into epistemic uncertainty due to lack of in-context data and aleatoric uncertainty inherent in the in-context prediction task. However, the decomposition idea remains under-explored due to the intractability of the latent parameter posterior from the underlying Bayesian model. In this work, we introduce a variational uncertainty decomposition framework for in-context learning without explicitly sampling from the latent parameter posterior, by optimising auxiliary queries as probes to obtain an upper bound to the aleatoric uncertainty of an LLM's in-context learning procedure, which also induces a lower bound to the epistemic uncertainty. Through experiments on synthetic and real-world tasks, we show quantitatively and qualitatively that the decomposed uncertainties obtained from our method exhibit desirable properties of epistemic and aleatoric uncertainty.

Keywords

Cite

@article{arxiv.2509.02327,
  title  = {Variational Uncertainty Decomposition for In-Context Learning},
  author = {I. Shavindra Jayasekera and Jacob Si and Filippo Valdettaro and Wenlong Chen and A. Aldo Faisal and Yingzhen Li},
  journal= {arXiv preprint arXiv:2509.02327},
  year   = {2025}
}

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