利用多源异构数据进行金融风险预测:一种新的基于混合策略的自适应方法

Gang Wang, Gang Chen, Huimin Zhao, Feng-xin Zhang, Shanlin Yang, Tian Lu
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引用次数: 2

摘要

多源数据无处不在的新现象为金融风险预测的突破提供了很好的途径。现有的大多数金融风险预测方法都是基于单一信息源,可能无法充分捕捉共同影响金融风险的各种复杂因素,我们提出了一种基于混合策略的自适应方法,以有效利用来自各种来源的异构软信息。该方法采用一种新的特征稀疏性学习方法自适应集成多源异构软特征和硬特征,并采用一种改进的证据推理规则自适应聚合基分类器预测,从而减轻了学习过程中的陈述性偏差和程序性偏差。在个人层面(关于P2P借贷平台的借款人)和公司层面(关于中国股票市场的上市公司)的两个案例中进行的评估表明,与仅仅依靠硬特征相比,使用我们提出的方法有效地结合多源异构软特征,可以更早地预测金融风险并取得理想的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Multi-Source Heterogeneous Data for Financial Risk Prediction: A Novel Hybrid-Strategy-Based Self-Adaptive Method
Emerging phenomena of ubiquitous multisource data offer promising avenues for making breakthroughs in financial risk prediction. While most existing methods for financial risk prediction are based on a single information source, which may not adequately capture various complex factors that jointly influence financial risks, we propose a hybrid-strategy-based self-adaptive method to effectively leverage heterogeneous soft information drawn from a variety of sources. The method uses a proposed new feature- sparsity learning method to adaptively integrate multisource heterogeneous soft features with hard features and a proposed improved evidential reasoning rule to adaptively aggregate base classifier predictions, thereby alleviating both the declarative bias and the procedural bias of the learning process. Evaluation in two cases at the individual level (concerning borrowers at a P2P lending platform) and the company level (concerning listed companies in the Chinese stock market) showed that, compared with relying solely on hard features, effectively incorporating multisource heterogeneous soft features using our proposed method enabled earlier prediction of financial risks with desirable performance.
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