Exploring the model of laboratory construction and optimization to promote the transformation of research results in the context of big data
Author:
Yu Ligang1, Ye Jin1, Chen Yang2
Affiliation:
1. Science and Technology Industry Department , Suzhou University of Science and Technology , Suzhou , Jiangsu , , China 2. School of Mathematical Sciences , Suzhou University of Science And Technology , Suzhou , Jiangsu , , China
Abstract
Abstract
Scientific research results represent a country’s innovation capability. To previous statistics, the scientific research results of Chinese university laboratories are more focused on the basic research stage, while the industrialization and commercialization stages of the results are often broken. In this paper, by using the DEA model to determine the relationship between input and output, decision unit, and efficiency variables, the input-output indexes are selected for the calculation to obtain the comprehensive efficiency, pure technical efficiency, and scale efficiency of the transformation of scientific research results in university laboratories; subsequently, the output slack variables of non-DEA validity decision unit are analyzed differently. The results show a 63.41% difference between the maximum comprehensive efficiency value and the minimum value of the transformation of scientific research results in 30 universities, and the slack variable variance analysis reveals that there is 42.27% input redundancy and 31.87% output deficiency in 30 universities. This paper improves the conversion rate of laboratory scientific research results based on the improvement of input and output indicators from the decision-making level; and proposes the tripartite collaboration model of laboratories governments, and enterprises, which promotes the acceleration of scientific research results into the market and the industrialization of scientific research results.
Publisher
Walter de Gruyter GmbH
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
Reference16 articles.
1. Grishakina, E., Ilieva, S., Komarov, N., & Vershinin, I. (2020). Monitoring of the scientific activity performance of organizations performing research and development based on fsmso – db ap so data. Science Governance and Scientometrics Journal, 15. 2. Ulyakina, N., Ilieva, S., Komarov, N., et al. (2021). Results from Monitoring the Effectiveness of Scientific Activities of Organisations Carrying Out Research and Development of Civilian Purposes, 2017–2019. Science Governance and Scientometrics Journal, 16. 3. Haining, W., Shanshan, L., Qiang, W., University, Q., & School, B. (2018). Coordination analysis of scientific research transformation ability and transformation efficiency: based on the data of 64 colleges and universities directly under the ministry of education in 2012-2016. Science and Technology Management Research. 4. Wang, H., Li, S., Qiang, W., et al. (2018). Coordination Analysis of Scientific Research Transformation Ability and Transformation Efficiency: Based on the data of 64 colleges and universities directly under the Ministry of Education in 2012-2016. Science and Technology Management Research. 5. Sarah Maslen, Andrew Hopkins. (2014). Do incentives work? A qualitative study of managers’ motivations in hazardous industries. Safety Science, 70, 419–428.
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|