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2024, 01, 1-13
智能技术赋能教育考试命题研究
基金项目(Foundation): 国家教育考试科研规划2021年度重点课题“基于多模态短文本语义理解的试题查重机制与查重系统研究”(GJK2021019)
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摘要:

随着科技的飞速发展,人工智能对招生考试的影响日益增大。顺应新发展要求,探索利用智能技术赋能教育考试命题,已成为当前教育考试中的热点问题。目前智能技术在国家考试命题中的优势体现还不够充分,与教育考试命题的对接还未形成系统的规范体系。探索智能技术赋能教育考试命题的全路径,围绕命题流程中的关键环节,探讨各环节中不同场景的技术应用,同时提出当前需要做的相关工作,为信息化时代深化教育考试命题科学化提供实施参考。

Abstract:

With the rapid development of science and technology,the influence of intelligent technology on enrollment examinations is increasing.In response to the demands of modern development,the exploration of intelligent technology to enhance educational examinations has become a prevalent topic.However,the full potential benefits of artificial intelligence in national examinations remain untapped,and a standardized system is yet to be established in the interface with educational examinations.To tackle this issue,this study aims to examine the entire process of using intelligent technology to empower educational examinations.This will involve discussing the technology' s application in different scenarios and key paths throughout the proposing process.Additionally,this study will put forward feasible recommendations to deepen the science of educational examination proposition in the information era.

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基本信息:

中图分类号:G434

引用信息:

[1]钟茂生,刘蕾,熊键,等.智能技术赋能教育考试命题研究[J].招生考试研究,2024(01):1-13.

基金信息:

国家教育考试科研规划2021年度重点课题“基于多模态短文本语义理解的试题查重机制与查重系统研究”(GJK2021019)

发布时间:

2024-05-31

出版时间:

2024-05-31

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