Journal of Information Systems Engineering and Management

Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System
Hui Huang 1, Thien Sang Lim 2 *
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1 Doctor, Faculty of Business, Economics and Accountancy, Universiti Malaysia Sabah, Sabah, Malaysia
2 Senior Lecturer, Faculty of Business, Economics and Accountancy, Universiti Malaysia Sabah, Sabah, Malaysia
* Corresponding Author
Research Article

Journal of Information Systems Engineering and Management, 2024 - Volume 9 Issue 2, Article No: 24534
https://doi.org/10.55267/iadt.07.14767

Published Online: 24 Apr 2024

Views: 47 | Downloads: 46

How to cite this article
APA 6th edition
In-text citation: (Huang & Lim, 2024)
Reference: Huang, H., & Lim, T. S. (2024). Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System. Journal of Information Systems Engineering and Management, 9(2), 24534. https://doi.org/10.55267/iadt.07.14767
Vancouver
In-text citation: (1), (2), (3), etc.
Reference: Huang H, Lim TS. Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System. J INFORM SYSTEMS ENG. 2024;9(2):24534. https://doi.org/10.55267/iadt.07.14767
AMA 10th edition
In-text citation: (1), (2), (3), etc.
Reference: Huang H, Lim TS. Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System. J INFORM SYSTEMS ENG. 2024;9(2), 24534. https://doi.org/10.55267/iadt.07.14767
Chicago
In-text citation: (Huang and Lim, 2024)
Reference: Huang, Hui, and Thien Sang Lim. "Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System". Journal of Information Systems Engineering and Management 2024 9 no. 2 (2024): 24534. https://doi.org/10.55267/iadt.07.14767
Harvard
In-text citation: (Huang and Lim, 2024)
Reference: Huang, H., and Lim, T. S. (2024). Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System. Journal of Information Systems Engineering and Management, 9(2), 24534. https://doi.org/10.55267/iadt.07.14767
MLA
In-text citation: (Huang and Lim, 2024)
Reference: Huang, Hui et al. "Construction and Optimization of Financial Risk Management Model Based on Financial Data and Text Data Influencing Information System". Journal of Information Systems Engineering and Management, vol. 9, no. 2, 2024, 24534. https://doi.org/10.55267/iadt.07.14767
ABSTRACT
A-share companies must manage financial risk to succeed. Textual data insights can greatly impact risk assessment results, although most risk management systems focus on quantitative financial assessments. This research constructs and enhances information system financial risk management models employing financial and textual data, including MD&A narratives, to fill this gap. We study how textual data aids financial risk management algorithms' risk prediction. Textual and financial research on 2001–2022 Shenzhen and Shanghai Stock Exchange companies is used. This study found financial and non-financial data models more predictive. Qualitative textual information is used in financial risk assessment to improve risk prediction algorithms. MD&A texts, sentiment analysis, and readability signal risk. Internet forum discussions are linked to financial risk, but media coverage is not. These unconventional data sources evaluate financial risk. The research shows that A-share corporations manage financial risk. The study advises merging qualitative textual data with financial metrics to solve literature gaps and improve risk management. Shenzhen and Shanghai Stock Exchange statistics suggest MD&A storylines might strengthen financial risk management models. Study shows readability and sentiment analysis increase risk model prediction. The study found that textual material affects financial risk, therefore risk assessment should include non-financial information. This complete risk management technique may assist A-share listed companies navigate financial markets and make smarter decisions using quantitative financial data and qualitative textual insights. This study implies textual data may help financial risk algorithms. MD&As help companies identify and manage financial risk. More study is needed to discover new textual elements and strengthen context-specific risk management frameworks.
KEYWORDS
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