Operational Performance Evaluation of Iron and Steel Industry in China under the Background of Digital Transformation – An Application of Data Envelopment Analysis
DOI:
https://doi.org/10.54097/yadkc450Keywords:
Iron and Steel Industry, DEA model, Operational performance.Abstract
This paper aims to study the operating performance of iron and steel enterprises under the background of digital transformation, using the DEA-Malmquist model to carry out static and dynamic analysis of the data from 2018 to 2022, which is divided into four parts. Generally speaking, most of the selected companies have good operational performance, but there is still room for improvement. This paper aims to establish a more comprehensive and objective evaluation system that aligns with the actual development of the steel industry, in order to fulfill the operational performance assessment needs of listed steel enterprises within the context of digitalization.
Downloads
References
Zuo, X & Dai, H 2023, ‘Industry 4.0 Boost China's iron and steel industry into A New era of digitalization and intelligence [A]’, China Metal Society, Proceedings of the 14th China Iron and Steel Annual Conference -- 14. Metallurgical Automation and Intelligence [C]. CMCC Saidi Consulting Co., LTD, pp.127 - 135.
Fan, S 2023, ‘Why did the steel industry turn digital transformation? How do I turn it? Who will transfer it? [N]’, China Metallurgical New.
Luo Z 2023, A good digital "compulsory course" to reshape the new advantages of steel [N]. China Metallurgical News.
Li K 2018, Performance evaluation of listed companies in information technology industry based on DEA research [J]. Modern commercial and trade industry, vol.33 (35) 6, pp.122 - 125. The DOI: 10.19311 / j. carol carroll nki. 1672 - 3198.
Zhan, Y 2019, Research on Financing efficiency of Listed coal companies in China based on DEA method [J]. Coal economic studies, vol. 33 (8) pp. 85 - 90 DOI: 10.13202 / j. carol carroll nki cer.
Wang, J & Xu D 2019, Ecological efficiency analysis of China's iron and steel industry based on DEA method [J]. Ecological Economy, vol.36 (01), pp.63 - 68.
Shu, H & Hong, W 2020, Based on corporate social responsibility of the three-stage DEA efficiency analysis [J]. Journal of statistics and decision, vol.4 (02), pp.183 - 185. The DOI: 10.13546 / j. carol carroll nki tjyjc.
Li Q & Liu B 2020, Research on Efficiency of Listed Companies in Information transmission, Software and information technology Service Industry --Based on Window DEA and DEA-Malmquist model [J]. China Price, pp.104 - 107.
Hongwang C & Gaolou C, Research on innovation performance evaluation of Chinese big Data enterprises based on DEA method [J]. Journal of Beijing University of Posts and Telecommunications (Social Sciences Edition), vol.19(01), pp.71 - 78.
Işgın T, Özel R, Bilgiç A, Florkowski WJ, Sevinç MR. DEA Performance Measurements in Cotton Production of Harran Plain, Turkey: A Single and Double Bootstrap Truncated Regression Approaches. Agriculture, vol.10 (4), pp.108.
Charnes, A, Cooper, W.W. & Rhodes, E 1978, Measuring the efficiency of decision-making units. Eur. J. Oper. Res., vol.2, pp. 429 – 444.
S. Malmquist, S 1953, Index numbers and indifference surfaces, Trabajos de Estadística, 4 (1953), pp. 209 – 242.
Cang L 2015, Comparative Study on Performance Evaluation Methods of listed companies in iron and steel Industry [D], Inner Mongolia University of Finance and Economics.
Ren, Z, Xiang J & WANG Z 2023, ‘Measurement and evaluation of digital transformation efficiency in Yangtze River Delta urban agglomeration: based on DEA-Malmquist model [J]’, Journal of Wenzhou University (Social Science Edition), vol.36 (06) pp.104 - 114.
LI, C 2013, ‘Evaluation on operation efficiency of Our country's Iron and Steel Enterprises Based on DEA [D]’, Wuhan University of Science and Technology.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.






