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Main Authors: Guo, Yijin, Ji, Kaiyuan, Zhu, Xiaorong, Wang, Junying, Wen, Farong, Li, Chunyi, Zhang, Zicheng, Zhai, Guangtao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.01793
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author Guo, Yijin
Ji, Kaiyuan
Zhu, Xiaorong
Wang, Junying
Wen, Farong
Li, Chunyi
Zhang, Zicheng
Zhai, Guangtao
author_facet Guo, Yijin
Ji, Kaiyuan
Zhu, Xiaorong
Wang, Junying
Wen, Farong
Li, Chunyi
Zhang, Zicheng
Zhai, Guangtao
contents Currently, nearly all evaluations of foundation models focus on objective metrics, emphasizing quiz performance to define model capabilities. While this model-centric approach enables rapid performance assessment, it fails to reflect authentic human experiences. To address this gap, we propose a Human-Centric subjective Evaluation (HCE) framework, focusing on three core dimensions: problem-solving ability, information quality, and interaction experience. Through experiments involving Deepseek R1, OpenAI o3 mini, Grok 3, and Gemini 2.5, we conduct over 540 participant-driven evaluations, where humans and models collaborate on open-ended research tasks, yielding a comprehensive subjective dataset. This dataset captures diverse user feedback across multiple disciplines, revealing distinct model strengths and adaptability. Our findings highlight Grok 3's superior performance, followed by Deepseek R1 and Gemini 2.5, with OpenAI o3 mini lagging behind. By offering a novel framework and a rich dataset, this study not only enhances subjective evaluation methodologies but also lays the foundation for standardized, automated assessments, advancing LLM development for research and practical scenarios. Our dataset link is https://github.com/yijinguo/Human-Centric-Evaluation.
format Preprint
id arxiv_https___arxiv_org_abs_2506_01793
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Human-Centric Evaluation for Foundation Models
Guo, Yijin
Ji, Kaiyuan
Zhu, Xiaorong
Wang, Junying
Wen, Farong
Li, Chunyi
Zhang, Zicheng
Zhai, Guangtao
Computation and Language
Currently, nearly all evaluations of foundation models focus on objective metrics, emphasizing quiz performance to define model capabilities. While this model-centric approach enables rapid performance assessment, it fails to reflect authentic human experiences. To address this gap, we propose a Human-Centric subjective Evaluation (HCE) framework, focusing on three core dimensions: problem-solving ability, information quality, and interaction experience. Through experiments involving Deepseek R1, OpenAI o3 mini, Grok 3, and Gemini 2.5, we conduct over 540 participant-driven evaluations, where humans and models collaborate on open-ended research tasks, yielding a comprehensive subjective dataset. This dataset captures diverse user feedback across multiple disciplines, revealing distinct model strengths and adaptability. Our findings highlight Grok 3's superior performance, followed by Deepseek R1 and Gemini 2.5, with OpenAI o3 mini lagging behind. By offering a novel framework and a rich dataset, this study not only enhances subjective evaluation methodologies but also lays the foundation for standardized, automated assessments, advancing LLM development for research and practical scenarios. Our dataset link is https://github.com/yijinguo/Human-Centric-Evaluation.
title Human-Centric Evaluation for Foundation Models
topic Computation and Language
url https://arxiv.org/abs/2506.01793