高科技
数据包络分析
中国
投资(军事)
资源配置
产业组织
资源(消歧)
边疆
业务
构造(python库)
经济
首都(建筑)
经济体制
计算机科学
管理
计算机网络
数学
政治学
法学
数学优化
考古
政治
历史
程序设计语言
作者
Jin-Cheng Lu,Meijuan Li
标识
DOI:10.1080/09537325.2022.2116570
摘要
Developing China’s high-tech industry is important to make the country innovation-oriented. This requires optimising the allocation of innovation resources and improving innovation efficiency. However, few studies have investigated this topic and the realisation path for the high-tech industry. This study develops an input-oriented inverse data envelopment analysis (DEA) model with frontier changes to analyse the optimisation of resource allocation in China’s high-tech industry during 2019–2025. With this method, decision makers can scientifically analyse the specific amount of resource investment. We also construct an analysis framework from short- and long-term perspectives. The results show that the excessive input of research and development (R&D) personnel and unbalanced allocation of capital resources are the main barriers to the development of high-tech industries in the short term, and in the mid- and long terms, the demands for investment in talent and capital will continue to increase. Improvement directions for promoting the development of China’s high-tech industry are discussed. Finally, we present valuable information for policymaking to promote progress in high-tech industries in different regions.
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