[2603.05485] Towards Provably Unbiased LLM Judges via Bias-Bounded Evaluation

[2603.05485] Towards Provably Unbiased LLM Judges via Bias-Bounded Evaluation

arXiv - AI 3 min read

About this article

Abstract page for arXiv paper 2603.05485: Towards Provably Unbiased LLM Judges via Bias-Bounded Evaluation

Computer Science > Artificial Intelligence arXiv:2603.05485 (cs) [Submitted on 5 Mar 2026] Title:Towards Provably Unbiased LLM Judges via Bias-Bounded Evaluation Authors:Benjamin Feuer, Lucas Rosenblatt, Oussama Elachqar View a PDF of the paper titled Towards Provably Unbiased LLM Judges via Bias-Bounded Evaluation, by Benjamin Feuer and 2 other authors View PDF HTML (experimental) Abstract:As AI models progress beyond simple chatbots into more complex workflows, we draw ever closer to the event horizon beyond which AI systems will be utilized in autonomous, self-maintaining feedback loops. Any autonomous AI system will depend on automated, verifiable rewards and feedback; in settings where ground truth is sparse or non-deterministic, one practical source of such rewards is an LLM-as-a-Judge. Although LLM judges continue to improve, the literature has yet to introduce systems capable of enforcing standards with strong guarantees, particularly when bias vectors are unknown or adversarially discovered. To remedy this issue, we propose average bias-boundedness (A-BB), an algorithmic framework which formally guarantees reductions of harm/impact as a result of any measurable bias in an LLM judge. Evaluating on Arena-Hard-Auto with four LLM judges, we achieve (tau=0.5, delta=0.01) bias-bounded guarantees while retaining 61-99% correlation with original rankings across formatting and schematic bias settings, with most judge-bias combinations exceeding 80%. The code to reproduce o...

Originally published on March 06, 2026. Curated by AI News.

Related Articles

Llms

Nicolas Carlini (67.2k citations on Google Scholar) says Claude is a better security researcher than him, made $3.7 million from exploiting smart contracts, and found vulnerabilities in Linux and Ghost

Link: https://m.youtube.com/watch?v=1sd26pWhfmg The Linux exploit is especially interesting because it was introduced in 2003 and was nev...

Reddit - Artificial Intelligence · 1 min ·
Llms

[P] I built an autonomous ML agent that runs experiments on tabular data indefinitely - inspired by Karpathy's AutoResearch

Inspired by Andrej Karpathy's AutoResearch, I built a system where Claude Code acts as an autonomous ML researcher on tabular binary clas...

Reddit - Machine Learning · 1 min ·
Llms

[R] BraiNN: An Experimental Neural Architecture with Working Memory, Relational Reasoning, and Adaptive Learning

BraiNN An Experimental Neural Architecture with Working Memory, Relational Reasoning, and Adaptive Learning BraiNN is a compact research‑...

Reddit - Machine Learning · 1 min ·
Llms

We hit 150 stars on our AI setup tool!

yo folks, we just hit 150 stars on our open source tool that auto makes AI context files. got 90 PRs merged and 20 issues that ppl are pi...

Reddit - Artificial Intelligence · 1 min ·
More in Llms: This Week Guide Trending

No comments

No comments yet. Be the first to comment!

Stay updated with AI News

Get the latest news, tools, and insights delivered to your inbox.

Daily or weekly digest • Unsubscribe anytime