AI-Driven Intellectual Property: Building and Empirical Testing of an Innovative Startup Collaborative Management Model-Analysis of Cross-Legal Domain Data in the Guangdong-Hong Kong-Macao Greater Bay Area

作者

  • Guo Xiaodi 黑龙江省未来发展创新创业服务中心 作者
  • Jingjiang Deng 黑龙江省未来发展创新创业服务中心 作者
  • Junming Liang 黑龙江省未来发展创新创业服务中心 作者
  • Chen Chen 黑龙江省未来发展创新创业服务中心 作者

DOI:

https://doi.org/10.65455/85c92315

关键词:

AI-driven, intellectual property, innovation and entrepreneurship, collaborative management model, Guangdong-Hong Kong-Macao Greater Bay Area

摘要

Abstract: With the rapid advancement of artificial intelligence technology, the collaborative management of intellectual property and innovation-driven entrepreneurship faces new opportunities and challenges. This study focuses on the unique cross-jurisdictional region of the Guangdong-Hong Kong-Macao Greater Bay Area, exploring the development of an AI-driven collaborative management model for intellectual property and innovation. Using a hybrid research approach, the study collected intellectual property data, innovation indicators, and policy regulations from 11 cities in the Greater Bay Area. Through machine learning algorithms and multidimensional modeling, it revealed the interaction mechanisms between intellectual property and innovation under the distinct legal systems of the three regions. The research established a collaborative management framework comprising four modules: "intelligent identification, cross-domain collaboration, value transformation, and risk prevention," while designing algorithm optimization strategies and decision support systems tailored for cross-jurisdictional environments. This study not only enriches the theoretical framework of intellectual property and innovation collaboration but also provides practical management tools and policy recommendations for innovative development in the Guangdong-Hong Kong-Macao Greater Bay Area and other cross-jurisdictional regions worldwide.

##submission.downloads##

已出版

2025-12-04