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Dynamic multi-attribute evaluation of digital economy development in China: a perspective from interaction effect

    Qinzi Xiao Affiliation
    ; Mingyun Gao Affiliation
    ; Lin Chen Affiliation
    ; Juncheng Jiang Affiliation

Abstract

This study aims to reflect the grey information coverage and complex interactions effect in digital economy development. Therefore, a multi-attribute decision making method based on the grey interaction relational degree of the normal cloud matrix (GIRD-NCM) model is proposed. First, the original information coverage grey numbers are transformed into normal cloud matrixes, and then a novel Minkowski distance between normal clouds is proposed by using different information principles. Second, the GIRD-NCM model is established according to the Choquet fuzzy integral and grey relational degree. Finally, the dynamic comprehensive evaluation of digital economy development in China from 2013 to 2020 is conducted. The implementation, availability, and feasibility of the GIRD-NCM model are verified by comparative analysis with three existing evaluation models. The empirical findings reveal a stable growth trend in China’s digital economy, with an annual growth rate of 7.87%, however, there are notable regional development disparities. The change in interaction degree has no effect on the rankings of provinces that are in the lead or have a moderately high level of digital economy development, but has a positive and negative impact on the rankings of these provinces with high and low levels of digital economy development, respectively.

Keyword : digital economy evaluation, grey relational degree, fuzzy integral, grey information coverage, normal cloud matrix

How to Cite
Xiao, Q., Gao, M., Chen, L., & Jiang, J. (2023). Dynamic multi-attribute evaluation of digital economy development in China: a perspective from interaction effect. Technological and Economic Development of Economy, 29(6), 1728–1752. https://doi.org/10.3846/tede.2023.20258
Published in Issue
Dec 21, 2023
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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