Education, Science, Technology, Innovation and Life
Open Access
Sign In

Corporate Governance Decision-making and Legal Protection Model Based on Data Fusion Technology

Download as PDF

DOI: 10.23977/acccm.2023.051114 | Downloads: 21 | Views: 305

Author(s)

Yijian Mao 1, Yiwen Mao 2

Affiliation(s)

1 Law School, Wenzhou University of Technology, Wenzhou, Zhejiang, China
2 ZUEL-SUR School of Law and Economics, Zhongnan University of Economics and Law, Wuhan, Hubei, China

Corresponding Author

Yiwen Mao

ABSTRACT

Corporate governance covers economics, business administration, law, and auditing and information technology. Effective corporate governance decision-making is an important source of a company's competitive advantage, it is one of the decisive factors to improve the competitiveness of an organization, and it plays a key role in ensuring the rapid development of the organization and sustainable growth at the same time. The quality of management is not only related to the company's performance, but also has a significant impact on the efficiency and effectiveness of the company's investment decisions, which in turn has a significant impact on the development of high-tech industries. Therefore, the legal protection of corporate governance decisions is very necessary. Faced with the huge amount of resources on the Internet today, netizens will always have a way to make use of them if they want to. In order to protect company resources and governance decisions, this paper aims to study a set of legal protection models for corporate governance decisions based on data fusion technology, so as to improve the protection of corporate governance decisions, which is conducive to the long-term sustainable development of the company. Using data fusion technology to conduct related experiments, the experimental results of this paper show that it is compared with other algorithms. The efficiency value of the method proposed in this paper can be higher than 95%, and the privacy protection and calculation accuracy are also due to other algorithms, which can have a large application space in corporate governance decision-making and its legal protection model.

KEYWORDS

Legal Protection Model, Data Fusion Technology, Corporate Governance Decisions, Investment Decision

CITE THIS PAPER

Yijian Mao, Yiwen Mao, Corporate Governance Decision-making and Legal Protection Model Based on Data Fusion Technology. Accounting and Corporate Management (2023) Vol. 5: 93-106. DOI: http://dx.doi.org/10.23977/acccm.2023.051114.

REFERENCES

[1] Lin B. How corporate governance structures affect strategic change decisions. Strategic Direction, 2018, 34(4):4-6.
[2] Kanapathippillai S, Mihret D, Johl S. Remuneration Committees and Attribution Disclosures on Remuneration Decisions: Australian Evidence. Journal of Business Ethics, 2019, 158(4):1063-1082.
[3] Nazar M. The Influence of Corporate Governance on Dividend Decisions of Listed Firms: Evidence from Sri Lanka. Journal of Asian Finance Economics and Business, 2021, 8(2):289-295.
[4] Yun G G. The Legal Frame of PEF and Its Growth Affecting the Investor's Protection and Corporate Governance Agenda. Sogang Journal of Law and Business, 2018, 8(2):119-151.
[5] Baral S K, Parida J K. Corporate Governance and Its Impact on Financial Performance: A Systematic Survey. Asian Journal of Management, 2018, 9(4):1237-1242.
[6] Zhang Dongxu, Guo Yinbiao, Hong Yongqiang, Hou Zengguang, Pan Ri, et al. Research on data fusion technology of the online monitoring system for optics bonnet polishing. Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture, 2018, 232(8):1436-1443.
[7] Du Y, Zhao T. Network Teaching Technology Based on Big Data Mining and Information Fusion. Security and Communication Networks, 2021, 2021(9):1-9.
[8] Yue H, Liao H, Li D, Chen L. Enterprise Financial Risk Management Using Information Fusion Technology and Big Data Mining. Wireless Communications and Mobile Computing, 2021, 2021(1):1-13.
[9] Jiao Z, Wu R, Wang Z, Liu T, Song G. A Novel Method to Improve the Fault Location Accuracy in Transmission Line Based on Data Fusion Technology. Proceedings of the Chinese Society of Electrical Engineering, 2017, 37(9):2571-2578.
[10] Liu C, Qiao C. Water quality monitoring method based on data fusion technology. Modelling, Measurement and Control C, 2017, 78(1):71-82.
[11] Nazar M. The Dynamic Impact of Corporate Governance on Investment Decisions of Non-Financial Companies in Sri Lanka. Journal of Contemporary Issues in Business and Government, 2021, 27(1):1404-1413.
[12] Lin D, Lin L. Corporate Governance Quality and Capital Structure Decisions: Empirical Evidence from Canada. Advances in Social Sciences Research Journal, 2019, 6(9):303-311.
[13] Styhre A, Bergstrom O. The benefit of market-based governance devices: Reflections on the issue of growing economic inequality as a corporate concern. European Management Journal, 2019, 37(4):413-420.
[14] Palladino L. Economic Policies for Innovative Enterprises: Implementing Multi-Stakeholder Corporate Governance: Review of Radical Political Economics, 2022, 54(1):5-25.
[15] Yasmin A, Fitdiarini N. Corporate Governance dan Keputusan Pendanaan. Jurnal Manajemen Bisnis, 2020, 17(4):548-565.
[16] Makarova V A. Optimization of Investments in Corporate Risk Management. Strategic Decisions and Risk Management, 2019, 10(3):220-227.
[17] Syaifullah A. The Role of Investor Protection Moderation in the Effect of Corporate Governance on Earnings Quality. Russian Journal of Agricultural and Socio-Economic Sciences, 2019, 86(2):177-188.
[18] Stoll M. A Data Privacy Governance Model: The Integration of the General Data Protection Regulation Into Standard Based Management Systems. International Journal on IT/Business Alignment and Governance, 2019, 10(1):74-93.
[19] Lv Z, Song H. Mobile Internet of Things under Data Physical Fusion Technology. IEEE Internet of Things Journal, 2020, 7(5):4616-4624.
[20] Song J, Shi Z, Du B, Han L, Wang Z, Wang H, et al. The Data Fusion Method of Redundant Gyroscope System Based on Virtual Gyroscope Technology. IEEE sensors journal, 2019, 19(22):10736-10743.
[21] Qiu J D. A Standard Cloud Platform Technology of Traffic Performance Index Based on Multi-Source Data Fusion. Open Journal of Transportation Technologies, 2018, 07(5):340-350.
[22] Rubaiyat A, Fallah Y, Li X, Bansal G, Infotechnology T. Multi-sensor Data Fusion for Vehicle Detection in Autonomous Vehicle Applications. Electronic Imaging, 2018, 2018(17):1-6.
[23] Xue T, Zheng Y, Geng G, Xiao Q, Zhu T. Estimating Spatiotemporal Variation in Ambient Ozone Exposure during 2013–2017 Using a Data-Fusion Model. Environmental Science and Technology, 2020, 54(23):14877-14888.
[24] Cleland S E, West J J, Reid S, Serre ML. Estimating Wildfire Smoke Concentrations during the October 2017 California Fires through BME Space/Time Data Fusion of Observed, Modeled, and Satellite-Derived PM 2.5. Environmental Science and Technology, 2020, 54(21):13439-13447.

Downloads: 13500
Visits: 181959

All published work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright © 2016 - 2031 Clausius Scientific Press Inc. All Rights Reserved.