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| Generative Publishing: Connotation, Extension, and Framework |
| DING Jingjia,SONG Ningyuan* |
| School of Information Management, Nanjing University, 210023, Nanjing, China |
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Abstract The deep integration of generative artificial intelligence (AI) with publishing is driving a paradigm shift in the industry, fundamentally transforming its underlying logic and overarching forms. Against this backdrop, this paper introduces and systematically elaborates on the novel concept of "generative publishing". Generative publishing is defined as an emerging publishing paradigm that utilizes large language models as its technical foundation, is led by publishing institutions, adopts human?machine collaboration as its core content generation logic, and aims to produce generative publications and services tailored to users’ personalized needs. Its conceptual essence can be deconstructed across five dimensions: it relies on large language models as the technical base for autonomous content production; it redefines the role of publishing institutions from intermediaries to leaders in content creation, engaging directly with users; it prioritizes human agency within human?machine collaboration to ensure content quality and value alignment; its outputs manifest in two primary forms—generative publications and generative publishing services; and collectively, it signifies a distinct developmental phase beyond traditional publishing formats. On the basis of the dynamics of human?machine collaboration, the extension of generative publishing can be categorized into three types: (1) Controlled generative publishing: Human professionals retain full control, provide precise instructions and perform rigorous quality checks. The large language model functions as an advanced tool within a tightly defined human-led framework. (2) Interactive generative publishing: Characterized by a bidirectional feedback loop, this model involves iterative co-creation. The large language model generates content and performs initial assessments, while human experts provide selective calibration and creative input. (3) Autonomous Generative Publishing: The large language model operates with substantial independence within predefined objectives and ethical boundaries. Human oversight shifts from direct process control to ex-post review, exercising veto authority while relying on embedded governance rules. To operationalize this paradigm, this paper constructs an actionable framework comprising three core components: (1) The publishing large language model, serving as the technical cornerstone, developed through strategic planning, data preparation, training and fine-tuning, and deployment and maintenance. (2) Generative publications as the core products, including compiled types (intelligent reorganization and systematization of existing knowledge), derivative types (creative transformation of classical content), and original types (dual innovation in both conceptual and formal dimensions). (3) Generative publishing services, embodying the knowledge-service attribute, with representative forms such as knowledge service robots and intelligent reading interaction interfaces. Generative publishing represents the industry’ s evolution toward a dynamic, intelligent, and knowledge-service-oriented ecosystem. While promising, its advancement inevitably confronts challenges related to copyright, authenticity, professional restructuring, and ethical governance, necessitating a balanced approach that fosters innovation while upholding the core values of publishing.
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Published: 19 March 2026
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Corresponding Authors:
Ningyuan SONG
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| 1 |
王鹏飞, 毛志慧. 2024年出版学研究的十大热点话题[J]. 科技与出版, 2025 (6): 5- 17.
|
| 2 |
谢泽杭, 李武. 从赋能到融合:生成式AI出版的价值、困境与发展图景[J]. 编辑学刊, 2023 (6): 13- 19.
|
| 3 |
索伟. 生成式智能出版的技术原理、应用挑战及优化路径[J]. 传播与版权, 2024 (8): 59- 61.
|
| 4 |
周文婷, 刘莹. 科技赋能出版新业态:生成式出版的内涵特征、实践进路与发展反思[J]. 出版广角, 2024 (3): 70- 74.
|
| 5 |
王楠, 何晶. 从生成式人工智能到生成性媒介:对“生成”意涵与媒介环境的再审视[J]. 编辑之友, 2024 (11): 80- 87.
|
| 6 |
杨阳, 宋吉述. 智能驱动与生态重构:中国出版业人工智能应用的现状挑战与趋势研判[J]. 科技与出版, 2025 (10): 13- 24.
|
| 7 |
丁靖佳. 数智时代教材建设的范式重构、形态创新及发展路径[J]. 出版与印刷, 2025 (6): 38- 47.
|
| 8 |
Bandi A , Adapa P , Kuchi Y . The power of generative AI:A review of requirements,models,input-output formats,evaluation metrics,and challenges[J]. Future Internet, 2023 (8): 260.
|
| 9 |
Thoppilan R,De Freitas D,Hall J,et al. LaMDA:Language models for dialog applications[PP/OL]. arXiv(2022-09-10)[2025-09-27]. https://doi.org/10.48550/arXiv.2201.08239.
|
| 10 |
吕晓峰, 孟祥晴, 詹洪春. 人工智能时代出版业知识服务的伦理挑战、价值重构与实践进路[J]. 科技与出版, 2025 (8): 47- 55.
|
| 11 |
丁靖佳, 方卿. 生成式语境下出版深度融合发展的敏捷治理研究[J]. 出版广角, 2025 (10): 3- 10.
|
| [1] |
LYU Xiaofeng,MENG Xiangqing,ZHAN Hongchun. Ethical Challenges, Value Reconstruction, and Practical Approaches of Knowledge Services in Publishing Industry in the Era of Artificial Intelligence[J]. Science-Technology & Publication, 2025, 44(8): 47-55. |
| [2] |
LI Hongfei,XIONG Yifei. Comparative Study on Copyright Risks and Compliance Governance of Artificial Intelligence-Generated Content[J]. Science-Technology & Publication, 2025, 44(8): 102-112. |
| [3] |
CHEN Qiang,ZHANG Ganghua. Reality and Future of Age-Friendly Digital Publishing: A Perspective Based on Digital Affordances[J]. Science-Technology & Publication, 2025, 44(6): 73-79. |
|
|
|
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