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Main Authors: Zeng, Hui, Xue, Jingyuan, Hao, Meng, Sun, Chen, Ning, Bin, Zhang, Na
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2308.04823
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author Zeng, Hui
Xue, Jingyuan
Hao, Meng
Sun, Chen
Ning, Bin
Zhang, Na
author_facet Zeng, Hui
Xue, Jingyuan
Hao, Meng
Sun, Chen
Ning, Bin
Zhang, Na
contents This paper unveils CG-Eval, the first-ever comprehensive and automated evaluation framework designed for assessing the generative capabilities of large Chinese language models across a spectrum of academic disciplines. CG-Eval stands out for its automated process, which critically assesses models based on their proficiency in generating precise and contextually relevant responses to a diverse array of questions within six key domains: Science and Engineering, Humanities and Social Sciences, Mathematical Calculations, Medical Practitioner Qualification Examination, Judicial Examination, and Certified Public Accountant Examination. Alongside this, we introduce Gscore, an innovative composite index developed from a weighted sum of multiple metrics. Gscore uniquely automates the quality measurement of a model's text generation against reference standards, providing a detailed and nuanced assessment of model performance. This automation not only enhances the efficiency and scalability of the evaluation process but also ensures objective and consistent assessment across various models. The detailed test data and results, highlighting the robust capabilities and comparative performance of the evaluated models, are accessible at http://cgeval.besteasy.com/.
format Preprint
id arxiv_https___arxiv_org_abs_2308_04823
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Evaluating the Generation Capabilities of Large Chinese Language Models
Zeng, Hui
Xue, Jingyuan
Hao, Meng
Sun, Chen
Ning, Bin
Zhang, Na
Computation and Language
This paper unveils CG-Eval, the first-ever comprehensive and automated evaluation framework designed for assessing the generative capabilities of large Chinese language models across a spectrum of academic disciplines. CG-Eval stands out for its automated process, which critically assesses models based on their proficiency in generating precise and contextually relevant responses to a diverse array of questions within six key domains: Science and Engineering, Humanities and Social Sciences, Mathematical Calculations, Medical Practitioner Qualification Examination, Judicial Examination, and Certified Public Accountant Examination. Alongside this, we introduce Gscore, an innovative composite index developed from a weighted sum of multiple metrics. Gscore uniquely automates the quality measurement of a model's text generation against reference standards, providing a detailed and nuanced assessment of model performance. This automation not only enhances the efficiency and scalability of the evaluation process but also ensures objective and consistent assessment across various models. The detailed test data and results, highlighting the robust capabilities and comparative performance of the evaluated models, are accessible at http://cgeval.besteasy.com/.
title Evaluating the Generation Capabilities of Large Chinese Language Models
topic Computation and Language
url https://arxiv.org/abs/2308.04823