人工智能推动的教育生态重塑

智能时代下教育生态系统协同演化模式研究

  • 胡艺龄 ,
  • 赵梓宏 ,
  • 文芳
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  • 华东师范大学 教育信息技术学系,上海 200062

录用日期: 2022-05-29

  网络出版日期: 2022-08-24

基金资助

2019年度国家社会科学基金重大项目“人工智能促进未来教育发展研究”(19ZDA364)

Research on the Co-evolution Model of AI Education Ecosystem: The Perspective of Complex System

  • Yiling Hu ,
  • Zihong Zhao ,
  • Fang Wen
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  • Department of Education Information Technology, East China Normal University, Shanghai 200062

Accepted date: 2022-05-29

  Online published: 2022-08-24

摘要

作为引发第四次科技革命的核心技术,人工智能(简称AI)技术对人类社会系统中各个子系统产生了颠覆性的变革与重塑,并导致产业与人力资本结构发生了重大转变。教育系统作为人才培养与人力资本输出的主要阵地,面对AI技术的融入与人才需求的提升,亟需转变其原有的发展目标与结构形态,以更好应对AI技术带来的冲击与挑战。本研究以复杂系统科学为理论基础,构建AI教育生态系统协同演化模式,并从宏观、中观与微观三个层面出发,剖析不同层面中教育系统所包含的不同主体以及主体间的复杂关系。同时,通过解构系统协同演化模式,建立AI教育变革驱动下的协同演化动力机理,提出“激励机制–保障机制–运行机制” 三位一体的整体战略,整合教育生态系统中不同主体的智慧与力量,共同促进教育生态系统的协同演化,以此促成智能时代的教育变革。

本文引用格式

胡艺龄 , 赵梓宏 , 文芳 . 智能时代下教育生态系统协同演化模式研究[J]. 华东师范大学学报(教育科学版), 2022 , 40(9) : 118 -126 . DOI: 10.16382/j.cnki.1000-5560.2022.09.011

Abstract

As the core technology that triggered the fourth technological revolution, artificial intelligence (AI) has brought about subversive changes and reshaping of various industries in the human social system, and the resulting industrial structure and human capital structure have undergone major changes. The education system is the main position for talent training and human capital output. In the face of the integration of AI technology and the transformation of social talent needs, the education system urgently needs to change its original development goals and structural forms to deal with the impact of AI technology on the education system shocks and challenges. Therefore, this research uses complex system science as the theoretical basis to construct a co-evolution model of the education ecosystem, and analyzes the subjects contained in the education system at different levels and the complexity between subjects from the three levels of macro, meso, and micro. Through the deconstruction of the system co-evolution model, the co-evolution dynamic mechanism driven by AI education reform is established, and the overall strategy of “incentive-guarantee-operating mechanism” is proposed to integrate the wisdom and power of multiple subjects in the education ecosystem and jointly promote the co-evolution of the education ecosystem, so as to promote the AI ??education reform of the education system.

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