Saved in:
Bibliographic Details
Main Authors: Zang, Jianxiang, Wei, Yongda, Bai, Ruxue, Jiang, Shiyu, Mo, Nijia, Li, Binhong, Sun, Qiang, Liu, Hui
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.00920
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910222997520384
author Zang, Jianxiang
Wei, Yongda
Bai, Ruxue
Jiang, Shiyu
Mo, Nijia
Li, Binhong
Sun, Qiang
Liu, Hui
author_facet Zang, Jianxiang
Wei, Yongda
Bai, Ruxue
Jiang, Shiyu
Mo, Nijia
Li, Binhong
Sun, Qiang
Liu, Hui
contents Reliable reward models (RMs) are critical for ensuring the safe alignment of large language models (LLMs). However, current RM evaluation methods focus solely on preference perception accuracies in given specific scenarios, obscuring the critical vulnerabilities of RMs in real-world scenarios. We identify the true challenge lies in assessing a novel dimension: Suitability, defined as conditional reliability under specific real-world perturbations. To this end, we introduce Reward Auditor, a hypothesis-testing framework specifically designed for RM suitability inference. Rather than answering "How accurate is the RM's preference perception for given samples?", it employs scientific auditing to answer: "Can we infer RMs exhibit systematic vulnerabilities in specific real-world scenarios?". Under real-world perturbed scenarios, Reward Auditor quantifies statistical significance and effect size by auditing distribution degradation of RM preference perception confidence. This enables inference of both the certainty and severity of RM vulnerabilities across diverse real-world scenarios. This lays a solid foundation for building next-generation LLM alignment systems that are verifiably safe, more robust, and trustworthy.
format Preprint
id arxiv_https___arxiv_org_abs_2512_00920
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reward Auditor: Inference on Reward Modeling Suitability in Real-World Perturbed Scenarios
Zang, Jianxiang
Wei, Yongda
Bai, Ruxue
Jiang, Shiyu
Mo, Nijia
Li, Binhong
Sun, Qiang
Liu, Hui
Computation and Language
Reliable reward models (RMs) are critical for ensuring the safe alignment of large language models (LLMs). However, current RM evaluation methods focus solely on preference perception accuracies in given specific scenarios, obscuring the critical vulnerabilities of RMs in real-world scenarios. We identify the true challenge lies in assessing a novel dimension: Suitability, defined as conditional reliability under specific real-world perturbations. To this end, we introduce Reward Auditor, a hypothesis-testing framework specifically designed for RM suitability inference. Rather than answering "How accurate is the RM's preference perception for given samples?", it employs scientific auditing to answer: "Can we infer RMs exhibit systematic vulnerabilities in specific real-world scenarios?". Under real-world perturbed scenarios, Reward Auditor quantifies statistical significance and effect size by auditing distribution degradation of RM preference perception confidence. This enables inference of both the certainty and severity of RM vulnerabilities across diverse real-world scenarios. This lays a solid foundation for building next-generation LLM alignment systems that are verifiably safe, more robust, and trustworthy.
title Reward Auditor: Inference on Reward Modeling Suitability in Real-World Perturbed Scenarios
topic Computation and Language
url https://arxiv.org/abs/2512.00920