English

Quantifying perturbation impacts for large language models

Machine Learning 2024-12-03 v1 Computation and Language Statistics Theory Machine Learning Statistics Theory

Abstract

We consider the problem of quantifying how an input perturbation impacts the outputs of large language models (LLMs), a fundamental task for model reliability and post-hoc interpretability. A key obstacle in this domain is disentangling the meaningful changes in model responses from the intrinsic stochasticity of LLM outputs. To overcome this, we introduce Distribution-Based Perturbation Analysis (DBPA), a framework that reformulates LLM perturbation analysis as a frequentist hypothesis testing problem. DBPA constructs empirical null and alternative output distributions within a low-dimensional semantic similarity space via Monte Carlo sampling. Comparisons of Monte Carlo estimates in the reduced dimensionality space enables tractable frequentist inference without relying on restrictive distributional assumptions. The framework is model-agnostic, supports the evaluation of arbitrary input perturbations on any black-box LLM, yields interpretable p-values, supports multiple perturbation testing via controlled error rates, and provides scalar effect sizes for any chosen similarity or distance metric. We demonstrate the effectiveness of DBPA in evaluating perturbation impacts, showing its versatility for perturbation analysis.

Keywords

Cite

@article{arxiv.2412.00868,
  title  = {Quantifying perturbation impacts for large language models},
  author = {Paulius Rauba and Qiyao Wei and Mihaela van der Schaar},
  journal= {arXiv preprint arXiv:2412.00868},
  year   = {2024}
}

Comments

Statistical Foundations of LLMs and Foundation Models Workshop at NeurIPS 2024

R2 v1 2026-06-28T20:18:41.245Z