Personalized Benchmarking: Evaluating LLMs by Individual Preferences

arXiv:2604.1894328.2h-index: 9
Predicted impact top 20% in AI · last 90 daysOriginality Synthesis-oriented
AI Analysis

For LLM evaluation, the paper shows that current aggregate benchmarks are inadequate for most users, highlighting the need for personalized evaluation methods.

The paper demonstrates that aggregate LLM benchmarks fail to capture individual user preferences, with Bradley-Terry correlations averaging only ρ=0.04 and 57% of users showing near-zero or negative correlation. It advocates for personalized benchmarks that rank models according to individual needs.

With the rise in capabilities of large language models (LLMs) and their deployment in real-world tasks, evaluating LLM alignment with human preferences has become an important challenge. Current benchmarks average preferences across all users to compute aggregate ratings, overlooking individual user preferences when establishing model rankings. Since users have varying preferences in different contexts, we call for personalized LLM benchmarks that rank models according to individual needs. We compute personalized model rankings using ELO ratings and Bradley-Terry coefficients for 115 active Chatbot Arena users and analyze how user query characteristics (topics and writing style) relate to LLM ranking variations. We demonstrate that individual rankings of LLM models diverge dramatically from aggregate LLM rankings, with Bradley-Terry correlations averaging only $ρ= 0.04$ (57\% of users show near-zero or negative correlation) and ELO ratings showing moderate correlation ($ρ= 0.43$). Through topic modeling and style analysis, we find users exhibit substantial heterogeneity in topical interests and communication styles, influencing their model preferences. We further show that a compact combination of topic and style features provides a useful feature space for predicting user-specific model rankings. Our results provide strong quantitative evidence that aggregate benchmarks fail to capture individual preferences for most users, and highlight the importance of developing personalized benchmarks that rank LLM models according to individual user preferences.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes