The Improvement of Accounting Work Efficiency and Quality through Big Data Technology
DOI: 10.23977/infse.2024.050401 | Downloads: 38 | Views: 959
Author(s)
Sihui Dai 1, Zongying Guo 2, Jingyi Li 3
Affiliation(s)
1 ISoftStone Technology Corporation, North York, Ontario, M2J 2C5, Canada
2 The Hong Kong Polytechnic University, Fremont, CA 94539, USA
3 BDO USA P.C.Los Angeles, CA 90071, USA
Corresponding Author
Sihui DaiABSTRACT
In today's digital age, the amount of data is exploding, and big data technology arises at the historic moment. For accounting work, how to effectively use this technology to improve work efficiency and quality, has become the focus of the industry. Big data technology has strong data processing and analysis capabilities, which can bring new changes to accounting work, and help enterprises to make more accurate decisions and enhance their competitiveness. To this end, the paper expounds how to significantly improve the efficiency and quality of accounting work. Through analyzing the characteristics and advantages of big data technology, combined with practical cases, this paper discusses its role in data processing, risk prediction, decision support and other aspects, which provides a powerful theoretical and practical basis for the modern development of accounting work.
KEYWORDS
Big Data Technology; Accounting Work Efficiency; Quality; ImprovementCITE THIS PAPER
Sihui Dai, Zongying Guo, Jingyi Li, The Improvement of Accounting Work Efficiency and Quality through Big Data Technology. Information Systems and Economics (2024) Vol. 5: 1-7. DOI: http://dx.doi.org/10.23977/infse.2024.050401.
REFERENCES
[1] Li pingting. Research on the path of big data technology in accounting application in the digital transformation environment [J]. China's Collective Economy, 2023 (34): 165-168.
[2] Li Ting. The Application of Big Data Thinking and Technology in Accounting Work [J]. China Economic and Trade, 2023 (27): 142-144.
[3] Tian Junmin. The strategy to improve the accounting information quality of feed enterprises under the background of big data [J]. China Feed, 2023 (18): 124-127.
[4] Wei Liping. On the challenges and solutions of enterprise management accounting in the era of big data [J]. Quality and Market, 2023 (7): 163-165.
[5] Shen Jiawei. Research on the improvement of enterprise internal financial audit quality in the environment of big data [J]. Accounting study, 2023 (32): 125-127.
[6] Zongying Guo, Yuxiang Sun, Jingyi Li, Mengdie Lu, The Influence of Business Analytics on Modern Management Accounting Informatization Decision under the Background of Big Data.[J]. Accounting and Corporate Management (2024) Vol. 6: 101-107.
[7] Yuxiang Sun, Jingyi Li, Mengdie Lu, Zongying Guo. Study of the Impact of the Big Data Era on Accounting and Auditing. [J]. Frontiers in Business, Economics and Management,(2024) 13(3), 44-47
[8] Bao, W., Che, H., & Zhang, J. (2020, December). Will_Go at SemEval-2020 Task 3: An accurate model for predicting the (graded) effect of context in word similarity based on BERT. In Proceedings of the Fourteenth Workshop on Semantic Evaluation (pp. 301-306).
[9] Jingyi Li, Mengdie Lu, Zongying Guo, Yuxiang Sun, Sihui Dai, Design and implementation of accounting and audit risk early warning system based on big data. Accounting, Auditing and Finance (2024) Vol. 5: 120-126. DOI: http://dx.doi.org/10.23977/accaf.2024.050117.
Downloads: | 19144 |
---|---|
Visits: | 450513 |
Sponsors, Associates, and Links
-
Accounting, Auditing and Finance
-
Industrial Engineering and Innovation Management
-
Tourism Management and Technology Economy
-
Journal of Computational and Financial Econometrics
-
Financial Engineering and Risk Management
-
Accounting and Corporate Management
-
Social Security and Administration Management
-
Population, Resources & Environmental Economics
-
Statistics & Quantitative Economics
-
Agricultural & Forestry Economics and Management
-
Social Medicine and Health Management
-
Land Resource Management
-
Information, Library and Archival Science
-
Journal of Human Resource Development
-
Manufacturing and Service Operations Management
-
Operational Research and Cybernetics