基于 ARIMA-SVR 的金融行为风险聚合模型

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS
Kybernetes Pub Date : 2024-07-15 DOI:10.1108/k-01-2024-0249
Zhangong Huang, Huwei Li
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引用次数: 0

摘要

目的区域性金融风险一旦爆发,不仅会影响区域内金融体系的稳定和安全,还会引发综合性金融危机,破坏国民经济,影响社会稳定。因此,有必要通过人工智能方法对区域金融风险进行调控。在本稿件中,我们仔细研究了与区域金融风险总量相关的贷款数据,并提出了一个 ARIMA-SVR 贷款数据回归模型,将传统的统计回归方法与机器学习框架相结合。该模型最初采用 ARIMA 模型来完成历史数据拟合,随后利用由此产生的误差作为 SVR 的输入,以完善非线性误差。实验结果实验结果表明,本论文中提出的 ARIMA-SVR(自回归整合移动平均模型-支持向量回归)方法在 RMSE(均方根误差)和 MAE(平均绝对误差)指标方面超越了其他方法,表现出优于深度学习 LSTM 方法的优势。该报告为未来的金融风险预测和相关时间序列数据的预测提供了基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ARIMA-SVR-based risk aggregation modeling in the financial behavior

Purpose

Once regional financial risks erupt, they not only affect the stability and security of the financial system in the region, but also trigger a comprehensive financial crisis, damage the national economy, and affect social stability. Therefore, it is necessary to regulate regional financial risks through artificial intelligence methods.

Design/methodology/approach

In this manuscript, we scrutinize the loan data pertaining to aggregated regional financial risks and proffer an ARIMA-SVR loan data regression model, amalgamating traditional statistical regression methods with a machine learning framework. This model initially employs the ARIMA model to accomplish historical data fitting and subsequently utilizes the resultant error as input for SVR to refine the non-linear error. Building upon this, it integrates with the original data to derive optimized prediction results.

Findings

The experimental findings reveal that the ARIMA-SVR (Autoregress Integrated Moving Average Model-Support Vector Regression) method advanced in this discourse surpasses individual methods in terms of RMSE (Root Mean Square Error) and MAE (Mean Absolute Error) indices, exhibiting superiority to the deep learning LSTM method.

Originality/value

An ARIMA-SVR framework for the financial risk recognition is proposed. This presentation furnishes a benchmark for future financial risk prediction and the forecasting of associated time series data.

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来源期刊
Kybernetes
Kybernetes 工程技术-计算机:控制论
CiteScore
4.90
自引率
16.00%
发文量
237
审稿时长
4.3 months
期刊介绍: Kybernetes is the official journal of the UNESCO recognized World Organisation of Systems and Cybernetics (WOSC), and The Cybernetics Society. The journal is an important forum for the exchange of knowledge and information among all those who are interested in cybernetics and systems thinking. It is devoted to improvement in the understanding of human, social, organizational, technological and sustainable aspects of society and their interdependencies. It encourages consideration of a range of theories, methodologies and approaches, and their transdisciplinary links. The spirit of the journal comes from Norbert Wiener''s understanding of cybernetics as "The Human Use of Human Beings." Hence, Kybernetes strives for examination and analysis, based on a systemic frame of reference, of burning issues of ecosystems, society, organizations, businesses and human behavior.
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