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Application of K-means Clustering Algorithm in Evaluation and Statistical Analysis of Internet Financial Transaction Data

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  • Shi Bo

Abstract

The purpose is to promote the orderly development of China's Internet financial transactions and minimize default and delinquency in Internet financial transactions. Based on the typical big data algorithm (K-means algorithm), this paper discusses the concepts of the K-means algorithm and Internet financial transactions, as well as the significance of big data algorithms for Internet financial transaction data evaluation and statistical analysis. Meanwhile, the existing Internet financial transaction systems are reviewed, and their deficiencies are summarized, based on which relevant countermeasures and suggestions are put forward. At the same time, the K-means clustering algorithm is applied to evaluate financial transaction data, finding that it can improve the accuracy of data and reduce the error by 40%. But when the number of clusters is 7, the output result distribution interval of the K-means clustering algorithm is 4 days, and when the number of clusters is 10, the output result distribution interval of the K-means clustering algorithm is 6 days, indicating that the convergence effect of this algorithm is relatively good. Additionally, many small and micro individuals still hold a negative attitude towards the innovation and adjustment of Internet financial transactions, indicating that the construction of China's Internet financial transaction system needs further optimization. The satisfaction of most small and micro individuals with innovation and adjustment also shows that the proposed Internet financial transaction adjustment measures are feasible, can provide references for relevant Internet financial transactions, and contributes to the development of Internet financial transactions in China.

Suggested Citation

  • Shi Bo, 2022. "Application of K-means Clustering Algorithm in Evaluation and Statistical Analysis of Internet Financial Transaction Data," Papers 2202.03146, arXiv.org, revised Nov 2022.
  • Handle: RePEc:arx:papers:2202.03146
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    References listed on IDEAS

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    5. Yan, Nina & Liu, Yang & Xu, Xun & He, Xiuli, 2020. "Strategic dual-channel pricing games with e-retailer finance," European Journal of Operational Research, Elsevier, vol. 283(1), pages 138-151.
    6. Winner Martin, 2019. "Protection of Creditors and Minority Shareholders in Cross-border Transactions," European Company and Financial Law Review, De Gruyter, vol. 16(1-2), pages 44-73, April.
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