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AGI-Elo: How Far Are We From Mastering A Task?

AGI-Elo: How Far Are We From Mastering A Task?

来源:Arxiv_logoArxiv
英文摘要

As the field progresses toward Artificial General Intelligence (AGI), there is a pressing need for more comprehensive and insightful evaluation frameworks that go beyond aggregate performance metrics. This paper introduces a unified rating system that jointly models the difficulty of individual test cases and the competency of AI models (or humans) across vision, language, and action domains. Unlike existing metrics that focus solely on models, our approach allows for fine-grained, difficulty-aware evaluations through competitive interactions between models and tasks, capturing both the long-tail distribution of real-world challenges and the competency gap between current models and full task mastery. We validate the generalizability and robustness of our system through extensive experiments on multiple established datasets and models across distinct AGI domains. The resulting rating distributions offer novel perspectives and interpretable insights into task difficulty, model progression, and the outstanding challenges that remain on the path to achieving full AGI task mastery.

Shuo Sun、Yimin Zhao、Christina Dao Wen Lee、Jiawei Sun、Chengran Yuan、Zefan Huang、Dongen Li、Justin KW Yeoh、Alok Prakash、Thomas W. Malone、Marcelo H. Ang

计算技术、计算机技术

Shuo Sun,Yimin Zhao,Christina Dao Wen Lee,Jiawei Sun,Chengran Yuan,Zefan Huang,Dongen Li,Justin KW Yeoh,Alok Prakash,Thomas W. Malone,Marcelo H. Ang.AGI-Elo: How Far Are We From Mastering A Task?[EB/OL].(2025-05-19)[2025-06-06].https://arxiv.org/abs/2505.12844.点此复制

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