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The Construction and Empirical Analysis of the Company’s Financial Early Warning Model Based on Data Mining Algorithms

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  • Aiqun Wang
  • Hongxiang Yu
  • Miaochao Chen

Abstract

With the rapid advancement of the informatization process, enterprise informatization management has received more and more attention. Facing the increasingly complex and changeable social and economic environment, the difficulty of enterprise risk management has gradually increased. How to establish an efficient risk management mechanism for early warning of corporate risks is the goal that companies seek. Traditional statistical analysis can no longer satisfy the processing of massive financial data. Therefore, how to find useful information for the financial risk early warning management of the enterprise from the large amount of financial data information generated by the business activities of the enterprise is a problem that enterprises urgently need to solve at present. The continuous improvement and innovation of data mining technology and the good performance of research and analysis of massive data have made the two closely linked. First, this study introduces the theories of financial risk early warning and data mining technology; second, it introduces the research process of financial risk early warning model and elaborates the three data mining techniques used in this study; then combined with the actual situation of listed companies in my country, it constructs financial risk early warning index system; and finally, 77 listed manufacturing companies and their matching companies that were first processed by ST in 2005-2007 were used as research samples, based on the financial data of the 2.4 years before being processed by ST and CXISP. It is found that the financial risk early warning model established by data mining technology has strong early warning capabilities. From the perspective of the prediction capabilities of the three models, the closer the time to ST, the higher the accuracy of the prediction; from the perspective of short-term early warning, the three models have better prediction effects, but from the perspective of long-term early warning, the prediction effects of neural networks and decision trees are better than logistic regression of statistical analysis; data mining techniques based on knowledge discovery are not only suitable for short-term early warning but also for longer-term early warning. Therefore, data mining can be applied to financial risk early warning analysis to achieve the purpose of using data mining technology for decision support.

Suggested Citation

  • Aiqun Wang & Hongxiang Yu & Miaochao Chen, 2022. "The Construction and Empirical Analysis of the Company’s Financial Early Warning Model Based on Data Mining Algorithms," Journal of Mathematics, Hindawi, vol. 2022, pages 1-9, February.
  • Handle: RePEc:hin:jjmath:3808895
    DOI: 10.1155/2022/3808895
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    Cited by:

    1. Xiangyu Li & Tianjie Lei & Jing Qin & Jiabao Wang & Weiwei Wang & Baoyin Liu & Dongpan Chen & Guansheng Qian & Li Zhang & Jingxuan Lu, 2023. "The Method of Segmenting the Early Warning Thresholds Based on Fisher Optimal Segmentation," Land, MDPI, vol. 12(2), pages 1-14, January.

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