4.7 Article

Spreading knowledge and technology: Research efficiency at universities based on the three-stage MCDM-NRSDEA method with bootstrapping

Journal

TECHNOLOGY IN SOCIETY
Volume 68, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.techsoc.2022.101915

Keywords

Research efficiency; Three-stage data envelopment analysis (DEA); Multi-criteria decision-making; Non-oriented super-efficiency DEA; Bootstrap

Funding

  1. National Social Science Foundation of China [21ATJ010, 20CTJ016, 19ZDA122]
  2. Discipline Construction Management Project of Zhejiang Gongshang University [XXK2019004]

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In response to the increasing higher education attainment and expansion of higher education institutions, many countries have started evaluating discipline efficiency to measure performance, promote competition, and allocate resources effectively. This paper proposes a three-stage multi-criteria decision-making method with bootstrapping to assess a discipline's scientific research efficiency from the university-level perspective. The proposed model incorporates contextual variables and random error to ensure robust analysis.
Consequent to increasing higher education attainment and the expansion of higher education institutions, many countries have embarked on assessing discipline efficiency to track performance, promote competition, and ensure reasonable resource allocation. Therefore, measuring scientific-research efficiency is a crucial part of evaluating a discipline's development. This paper proposes the three-stage multi-criteria decision-making (MCDM) non-radial super-efficiency data envelopment analysis (NRSDEA) method with bootstrapping to study a discipline's scientific research efficiency from the university-level perspective. To ensure robust analysis, the proposed model incorporates the contextual variables describing the external environment and the random error. The data envelopment analysis (DEA) model is a non-oriented one. The three-stage DEA approach is applied, including contextual variables such as economic growth, innovation, infrastructure, and the natural environment. In addition, the bootstrap method is applied to correct for measurement errors. Finally, the research efficiency measurement of the statistics discipline at Chinese universities is taken as an example to verify the method's validity.

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