通过集成中文耳语聚类和联合学习加强金融困境预测

Q1 Economics, Econometrics and Finance Journal of Open Innovation: Technology, Market, and Complexity Pub Date : 2024-07-25 DOI:10.1016/j.joitmc.2024.100344
Amel Ibrahim Al Ali , Sheeja Rani S , Ahmed M. Khedr
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引用次数: 0

摘要

当个人或公司难以履行财务义务时,往往由于固定成本高、流动性差或收入对经济衰退的敏感性等因素,就会出现财务困境。虽然通过分析财务数据来评估公司面临财务困境的可能性,已经开发出了多种机器学习和深度学习方法来预测财务困境,但在提高预测准确性和管理时间复杂性方面仍然存在挑战。为解决这一问题,我们引入了一种名为 "中国低语聚类随机梯度下降联合学习法"(CWCSGDFL)的新方法。该方法旨在通过使用哈曼相似性索引中文耳语聚类过程对数据样本进行分组,用匹配系数对其进行验证,并解决数据不平衡问题,从而提高财务困境预测的效率。同时,采用 Kaiser-Meyer-Olkin 相关目标预测模型来选择预测的相关特征。CWCSGDFL 利用这些选定的特征实现了均衡的聚类结果,从而降低了财务困境预测的时间复杂性。采用随机梯度高斯核联合学习方法在预测困境的同时保护隐私,并辅以克里金回归进行模型分析。随机梯度下降势能优化全局目标函数,确保以最小的损失进行准确分类。实验结果表明,CWCSGDFL 的平均准确率为 96%,精确率为 94%,召回率为 98%,F-measure 为 98%,时间复杂度为 36 毫秒,优于现有技术。
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Enhancing financial distress prediction through integrated Chinese Whisper clustering and federated learning

Financial distress occurs when individuals or companies struggle to meet financial obligations, often due to factors like high fixed costs, illiquidity, or revenue sensitivity to economic downturns. While various machine learning and deep learning approaches have been developed for predicting financial distress by analyzing financial data to assess the likelihood of a company facing financial difficulties, challenges persist in achieving enhanced prediction accuracy and managing time complexity. To address this, a novel method known as the Chinese Whisper Clustered Stochastic Gradient Descent Federated Learning method (CWCSGDFL) is introduced. It aims to improve the efficiency of financial distress prediction by grouping data samples using the Hamann Similarity Indexed Chinese Whispers clustering process, validating them with a matching coefficient, and addressing data imbalance. Also, Kaiser-Meyer-Olkin correlative targeted projection model is employed to choose the pertinent features for prediction. By achieving balanced clustering results with these selected features, CWCSGDFL reduces time complexity in financial distress prediction. Stochastic Gradient Gaussian Kernel Federated Learning approach is employed to preserve privacy while predicting distress, aided by kriging regression for model analysis. Stochastic gradient descent momentum optimizes the global objective function, ensuring accurate classification with minimal loss. Experimental results demonstrate that CWCSGDFL achieves an average accuracy of 96%, precision of 94%, recall of 98%, F-measure of 98%, and a time complexity of 36 ms, outperforming the existing techniques.

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来源期刊
Journal of Open Innovation: Technology, Market, and Complexity
Journal of Open Innovation: Technology, Market, and Complexity Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
11.00
自引率
0.00%
发文量
196
审稿时长
1 day
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