Addressing Pitfalls in the Evaluation of Uncertainty Estimation Methods for Natural Language Generation
- URL: http://arxiv.org/abs/2510.02279v1
- Date: Thu, 02 Oct 2025 17:54:09 GMT
- Title: Addressing Pitfalls in the Evaluation of Uncertainty Estimation Methods for Natural Language Generation
- Authors: Mykyta Ielanskyi, Kajetan Schweighofer, Lukas Aichberger, Sepp Hochreiter,
- Abstract summary: Hallucinations are a common issue that undermine the reliability of large language models (LLMs)<n>Recent studies have identified a subset of hallucinations, known as confabulations, which arise due to predictive uncertainty of LLMs.<n>To detect confabulations, various methods for estimating predictive uncertainty in natural language generation (NLG) have been developed.
- Score: 20.726685669562496
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Hallucinations are a common issue that undermine the reliability of large language models (LLMs). Recent studies have identified a specific subset of hallucinations, known as confabulations, which arise due to predictive uncertainty of LLMs. To detect confabulations, various methods for estimating predictive uncertainty in natural language generation (NLG) have been developed. These methods are typically evaluated by correlating uncertainty estimates with the correctness of generated text, with question-answering (QA) datasets serving as the standard benchmark. However, commonly used approximate correctness functions have substantial disagreement between each other and, consequently, in the ranking of the uncertainty estimation methods. This allows one to inflate the apparent performance of uncertainty estimation methods. We propose using several alternative risk indicators for risk correlation experiments that improve robustness of empirical assessment of UE algorithms for NLG. For QA tasks, we show that marginalizing over multiple LLM-as-a-judge variants leads to reducing the evaluation biases. Furthermore, we explore structured tasks as well as out of distribution and perturbation detection tasks which provide robust and controllable risk indicators. Finally, we propose to use an Elo rating of uncertainty estimation methods to give an objective summarization over extensive evaluation settings.
Related papers
- Towards Reliable LLM-based Robot Planning via Combined Uncertainty Estimation [68.106428321492]
Large language models (LLMs) demonstrate advanced reasoning abilities, enabling robots to understand natural language instructions and generate high-level plans with appropriate grounding.<n>LLMs hallucinations present a significant challenge, often leading to overconfident yet potentially misaligned or unsafe plans.<n>We present Combined Uncertainty estimation for Reliable Embodied planning (CURE), which decomposes the uncertainty into epistemic and intrinsic uncertainty, each estimated separately.
arXiv Detail & Related papers (2025-10-09T10:26:58Z) - Towards Harmonized Uncertainty Estimation for Large Language Models [22.58034272573749]
It is essential to quantify the reliability of their generations through uncertainty estimation.<n>We propose CUE (Corrector for Uncertainty Estimation): A straightforward yet effective method that employs a lightweight model trained on data aligned with the target LLM's performance to adjust uncertainty scores.
arXiv Detail & Related papers (2025-05-25T10:17:57Z) - TokUR: Token-Level Uncertainty Estimation for Large Language Model Reasoning [27.449948943467163]
We propose a Token-level Uncertainty estimation framework for Reasoning (TokUR)<n>TokUR enables Large Language Models to self-assess and self-improve their responses in mathematical reasoning.<n> Experiments on mathematical reasoning datasets of varying difficulty demonstrate that TokUR exhibits a strong correlation with answer correctness and model robustness.
arXiv Detail & Related papers (2025-05-16T22:47:32Z) - CLUE: Concept-Level Uncertainty Estimation for Large Language Models [49.92690111618016]
We propose a novel framework for Concept-Level Uncertainty Estimation for Large Language Models (LLMs)
We leverage LLMs to convert output sequences into concept-level representations, breaking down sequences into individual concepts and measuring the uncertainty of each concept separately.
We conduct experiments to demonstrate that CLUE can provide more interpretable uncertainty estimation results compared with sentence-level uncertainty.
arXiv Detail & Related papers (2024-09-04T18:27:12Z) - From Risk to Uncertainty: Generating Predictive Uncertainty Measures via Bayesian Estimation [5.355925496689674]
We build a framework that allows one to generate different predictive uncertainty measures.<n>We validate our method on image datasets by evaluating its performance in detecting out-of-distribution and misclassified instances.
arXiv Detail & Related papers (2024-02-16T14:40:22Z) - One step closer to unbiased aleatoric uncertainty estimation [71.55174353766289]
We propose a new estimation method by actively de-noising the observed data.
By conducting a broad range of experiments, we demonstrate that our proposed approach provides a much closer approximation to the actual data uncertainty than the standard method.
arXiv Detail & Related papers (2023-12-16T14:59:11Z) - Decomposing Uncertainty for Large Language Models through Input Clarification Ensembling [69.83976050879318]
In large language models (LLMs), identifying sources of uncertainty is an important step toward improving reliability, trustworthiness, and interpretability.
In this paper, we introduce an uncertainty decomposition framework for LLMs, called input clarification ensembling.
Our approach generates a set of clarifications for the input, feeds them into an LLM, and ensembles the corresponding predictions.
arXiv Detail & Related papers (2023-11-15T05:58:35Z) - Adaptive Uncertainty Estimation via High-Dimensional Testing on Latent
Representations [28.875819909902244]
Uncertainty estimation aims to evaluate the confidence of a trained deep neural network.
Existing uncertainty estimation approaches rely on low-dimensional distributional assumptions.
We propose a new framework using data-adaptive high-dimensional hypothesis testing for uncertainty estimation.
arXiv Detail & Related papers (2023-10-25T12:22:18Z) - DEUP: Direct Epistemic Uncertainty Prediction [56.087230230128185]
Epistemic uncertainty is part of out-of-sample prediction error due to the lack of knowledge of the learner.
We propose a principled approach for directly estimating epistemic uncertainty by learning to predict generalization error and subtracting an estimate of aleatoric uncertainty.
arXiv Detail & Related papers (2021-02-16T23:50:35Z) - The Aleatoric Uncertainty Estimation Using a Separate Formulation with
Virtual Residuals [51.71066839337174]
Existing methods can quantify the error in the target estimation, but they tend to underestimate it.
We propose a new separable formulation for the estimation of a signal and of its uncertainty, avoiding the effect of overfitting.
We demonstrate that the proposed method outperforms a state-of-the-art technique for signal and uncertainty estimation.
arXiv Detail & Related papers (2020-11-03T12:11:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.