AILGMLMay 21, 2025

Generalised Probabilistic Modelling and Improved Uncertainty Estimation in Comparative LLM-as-a-judge

arXiv:2505.15240v12 citationsh-index: 61UAI
Originality Incremental advance
AI Analysis

This work addresses efficiency and reliability in LLM-based evaluation systems, though it appears incremental as it builds on existing probabilistic modelling frameworks.

The paper tackles the problem of improving uncertainty estimation in comparative LLM-as-a-judge frameworks, showing that their proposed uncertainty estimates, such as probability of reordering, reduce the number of needed comparisons by about 50%.

This paper explores generalised probabilistic modelling and uncertainty estimation in comparative LLM-as-a-judge frameworks. We show that existing Product-of-Experts methods are specific cases of a broader framework, enabling diverse modelling options. Furthermore, we propose improved uncertainty estimates for individual comparisons, enabling more efficient selection and achieving strong performance with fewer evaluations. We also introduce a method for estimating overall ranking uncertainty. Finally, we demonstrate that combining absolute and comparative scoring improves performance. Experiments show that the specific expert model has a limited impact on final rankings but our proposed uncertainty estimates, especially the probability of reordering, significantly improve the efficiency of systems reducing the number of needed comparisons by ~50%. Furthermore, ranking-level uncertainty metrics can be used to identify low-performing predictions, where the nature of the probabilistic model has a notable impact on the quality of the overall uncertainty.

Foundations

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