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Performance assessment of ensemble learning systems in financial data classification

机译:集成学习系统在财务数据分类中的绩效评估

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Financial data classification plays an important role in investment and banking industry with the purpose to control default risk, improve cash and select the best customers. Ensemble learning and classification systems are becoming gradually more applied to classify financial data where outputs from different classification systems are combined. The objective of this research is to assess the relative performance of existing state-of-the-art ensemble learning and classification systems with applications to corporate bankruptcy prediction and credit scoring. The considered ensemble systems include AdaBoost, LogitBoost, RUSBoost, subspace, and bagging ensemble system. The experimental results from three datasets: one is composed of quantitative attributes, one encompasses qualitative data, and another one combines both quantitative and qualitative attributes. By using ten-fold cross-validation method, the experimental results show that AdaBoost is effective in terms of low classification error, limited complexity, and short time processing of the data. In addition, the experimental results show that ensemble classification systems outperform existing models that were recently validated on the same databases. Therefore, ensemble classification system can be employed to increase the reliability and consistency of financial data classification task.
机译:财务数据分类在投资和银行业中起着重要作用,其目的是控制违约风险,改善现金并选择最佳客户。集成式学习和分类系统正逐渐应用于将来自不同分类系统的输出组合在一起的财务数据进行分类。这项研究的目的是评估现有最先进的集成学习和分类系统的相对性能,并将其应用于公司破产预测和信用评分。所考虑的集成系统包括AdaBoost,LogitBoost,RUSBoost,子空间和装袋集成系统。来自三个数据集的实验结果:一个数据集由定量属性组成,一个数据集包含定性数据,另一个数据集结合了定量和定性属性。通过十倍交叉验证方法,实验结果表明,AdaBoost在分类错误率低,复杂度有限和数据处理时间短的方面有效。此外,实验结果表明,集成分类系统的性能优于最近在同一数据库上验证的现有模型。因此,可以采用集成分类系统来提高财务数据分类任务的可靠性和一致性。

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