A Financial Fraud Prediction Framework Based on Stacking Ensemble Learning
Shanshan Zhu,
Haotian Wu,
Eric W. T. Ngai
et al.
Abstract:With the rapid development of the capital market, financial fraud cases are becoming increasingly common. The evolving fraud strategies pose significant threats to financial regulation, market order, and the interests of ordinary investors. In order to combine the generalization performance of different machine learning methods and improve the effectiveness of financial fraud prediction, this paper proposes a novel financial fraud prediction framework based on stacking ensemble learning. This framework, based … Show more
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