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新质生产力视域下的人工智能自动化:双重生产力叠加效应与新经济增长

张永林 刘李俪 胡小莉

张永林, 刘李俪, 胡小莉. 新质生产力视域下的人工智能自动化:双重生产力叠加效应与新经济增长[J]. 北京科技大学学报(社会科学版), 2026, 42(3): 60-70. doi: 10.19979/j.cnki.issn10082689.2025070101
引用本文: 张永林, 刘李俪, 胡小莉. 新质生产力视域下的人工智能自动化:双重生产力叠加效应与新经济增长[J]. 北京科技大学学报(社会科学版), 2026, 42(3): 60-70. doi: 10.19979/j.cnki.issn10082689.2025070101
ZHANG Yonglin, LIU Lili, HU Xiaoli. Artificial Intelligence Automation from the Perspective of New Quality Productive Forces: The Superposition Effect of Dual Productivity and New Economic Growth[J]. Journal of University of Science and Technology Beijing ( Social Sciences Edition), 2026, 42(3): 60-70. doi: 10.19979/j.cnki.issn10082689.2025070101
Citation: ZHANG Yonglin, LIU Lili, HU Xiaoli. Artificial Intelligence Automation from the Perspective of New Quality Productive Forces: The Superposition Effect of Dual Productivity and New Economic Growth[J]. Journal of University of Science and Technology Beijing ( Social Sciences Edition), 2026, 42(3): 60-70. doi: 10.19979/j.cnki.issn10082689.2025070101

新质生产力视域下的人工智能自动化:双重生产力叠加效应与新经济增长

doi: 10.19979/j.cnki.issn10082689.2025070101
基金项目: 国家社会科学基金重点项目“人工智能信息生产力模型系统构建研究”(编号:20AJY001);教育部人文社会科学规划基金项目“人工智能生产力理论模型与经济应用研究”(编号:18YJA790110)。
详细信息
    作者简介:

    张永林(1959—),男,黑龙江哈尔滨人,北京师范大学统计学院教授

    刘李俪(1995—),女,北京人,中国教育科学研究院教育财政研究所助理研究员

    胡小莉(1993—),女,北京人,中国传媒大学经济与管理学院副教授

  • 中图分类号: F299.27

Artificial Intelligence Automation from the Perspective of New Quality Productive Forces: The Superposition Effect of Dual Productivity and New Economic Growth

  • 摘要: 文章解释了新质生产力视域下的人工智能自动化概念的内涵、特征和意义。人工智能自动化不同于机械自动化,是组织和行为的自主生成性。其本质特征是自我优化机制、自主组织机理和自动行为机能。人工智能自动化的这些特质和特性,使其产生直接和间接两方面的双重生产力。人工智能自动化的直接生产力与间接生产力复合叠加,产生技术创新增长率大于资本积累增长率效应、资本生产率增长×技术生产率增长叠加效应和经济增长奇点效应。文章通过对新质生产力视域下人工智能自动化的深入分析,目的在于解释人工智能与经济增长的关键问题,研究人工智能自动化是什么特征、特质和特性的生产模型,产生什么样的生产力,如何产生的,有什么意义,为中国人工智能创新与经济发展提供智力支持。

     

  • 图  1  人工智能自组织框架

    图  2  智能自动生成系统

    图  3  人工智能自我优化

    图  4  双重生产力叠加产生指数大于1的非线性增长

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出版历程
  • 收稿日期:  2025-07-27
  • 刊出日期:  2026-06-01

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