Xpertbench: Expert Level Tasks with Rubrics-Based Evaluation
Abstract
As Large Language Models (LLMs) exhibit plateauing performance on conventional benchmarks, a pivotal challenge persists: evaluating their proficiency in complex, open-ended tasks characterizing genuine expert-level cognition. Existing frameworks suffer from narrow domain coverage, reliance on generalist tasks, or self-evaluation biases. To bridge this gap, we present XpertBench, a high-fidelity benchmark engineered to assess LLMs across authentic professional domains. XpertBench consists of 1,346 meticulously curated tasks across 80 categories, spanning finance, healthcare, legal services, education, and dual-track research (STEM and Humanities). These tasks are derived from over 1,000 submissions by domain experts--including researchers from elite institutions and practitioners with extensive clinical or industrial experience--ensuring superior ecological validity. Each task uses detailed rubrics with mostly 15-40 weighted checkpoints to assess professional rigor. To facilitate scalable yet human-aligned assessment, we introduce ShotJudge, a novel evaluation paradigm that employs LLM judges calibrated with expert few-shot exemplars to mitigate self-rewarding biases. Our empirical evaluation of state-of-the-art LLMs reveals a pronounced performance ceiling: even leading models achieve a peak success rate of only ~66%, with a mean score around 55%. Models also exhibit domain-specific divergence, showing non-overlapping strengths in quantitative reasoning versus linguistic synthesis.. These findings underscore a significant "expert-gap" in current AI systems and establish XpertBench as a critical instrument for navigating the transition from general-purpose assistants to specialized professional collaborators.
Cite
@article{arxiv.2604.02368,
title = {Xpertbench: Expert Level Tasks with Rubrics-Based Evaluation},
author = {Xue Liu and Xin Ma and Yuxin Ma and Yongchang Peng and Duo Wang and Zhoufutu Wen and Ge Zhang and Kaiyuan Zhang and Xinyu Chen and Yida Ding and Tianci He and Jiani Hou and Liang Hu and Ziyun Huang and Yongzhe Hui and Jianpeng Jiao and Chennan Ju and Yingru Kong and Yiran Li and Jiashuo Liu and Mengyun Liu and Luyao Ma and Fei Ni and Yiqing Ni and Pengbo Niu and Yueyan Qiu and Yanle Ren and Xinyu Shen and Zilin Shi and Zaiyuan Wang and Wenjie Yue and Chun Zhang and Shiyu Zhang and Xinyi Zhang and Kaiwen Zhao and Zhenwei Zhu and Shanshan Wu and Qi Zhao and Wenhao Huang},
journal= {arXiv preprint arXiv:2604.02368},
year = {2026}
}