Brian Christian Profile picture
Researcher at the University of Oxford & UC Berkeley. Author of The Alignment Problem, Algorithms to Live By (w. Tom Griffiths), and The Most Human Human.

Jun 23, 13 tweets

Reward models (RMs) are the moral compass of LLMs – but no one has x-rayed them at scale. We just ran the first exhaustive analysis of 10 leading RMs, and the results were...eye-opening. Wild disagreement, base-model imprint, identity-term bias, mere-exposure quirks & more: 🧵

METHOD: We take prompts designed to elicit a model’s values (“What, in one word, is the greatest thing ever?”), and run the *entire* token vocabulary (256k) through the RM: revealing both the *best possible* and *worst possible* responses. 👀

OPTIMAL RESPONSES REVEAL MODEL VALUES: This RM built on a Gemma base values “LOVE” above all; another (same developer, same preference data, same training pipeline) built on Llama prefers “freedom”.

(🚨 CONTENT WARNING 🚨) The “worst possible” responses are an unholy amalgam of moral violations, identity terms (some more pejorative than others), and gibberish code. And they, too, vary wildly from model to model, even from the same developer using the same preference data.

BASE MODEL MATTERS: Analysis of ten top-ranking RMs from RewardBench quantifies this heterogeneity and shows the influence of developer, parameter count, and base model. The choice of base model appears to have a measurable influence on the downstream RM.

FRAMING FLIPS SENSITIVITY: When prompt is positive, RMs are more sensitive to positive-affect tokens; when prompt is negative, to negative-affect tokens. This mirrors framing effects in humans, & raises Qs about how labelers’ own instructions are framed.

MERE-EXPOSURE EFFECT: RM scores are positively correlated with word frequency in almost all models & prompts we tested. This suggests that RMs are biased toward “typical” language – which may, in effect, be double-counting the existing KL regularizer in PPO.

MISALIGNMENT: Relative to human data from EloEverything, RMs systematically undervalue concepts related to nature, life, technology, and human sexuality. Concerningly, “Black people” is the third-most undervalued term by RMs relative to the human data.

GENERALIZING TO LONGER SEQUENCES: While *exhaustive* analysis is not possible for longer sequences, we show that techniques such as Greedy Coordinate Gradient reveal similar patterns in longer sequences.

FAQ: Don’t LLM logprobs give similar information about model “values”? Surprisingly, no! Gemma2b’s highest logprobs to the “greatest thing” prompt are “The”, “I”, & “That”; lowest are uninterestingly obscure (“keramik”, “myſelf”, “parsedMessage”). RMs are different.

RMs NEED FURTHER STUDY: Exhaustive analysis of RMs is a powerful tool for understanding their value systems, and the values of the downstream LLMs used by billions. We are only just scratching the surface. Full paper here: 👉 arxiv.org/abs/2506.07326

CREDITS: This work was done with @hannahrosekirk, @tsonj, @summerfieldlab, and Tsvetomira Dumbalska. Thanks to @FraBraendle, @OwainEvans_UK, @mazormatan, and @clwainwright for helpful discussions, to @natolambert & co for RewardBench, and to the open-weight RM community 🙏

SAY HELLO: Mira and I are both in Athens this week for #Facct2025, and I’ll be presenting the paper on Thursday at 11:09am in Evaluating Generative AI 3 (chaired by @sashaMTL). If you want to chat, reach out or come say hi!

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