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Research on Diagnosis Method Based on Multi-Class Sample Imbalanced Data

机译:基于多类样本不平衡数据的诊断方法研究

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In reality, data on many engineering problems are classified as imbalanced data, which poses significant challenges to adopting a data-driven approach. In this paper, the SOU data preprocessing method combining synthetic minority oversampling technique, random oversampling and random under sampling is used for data equalization. After, the cars evaluation, wine production regions are classified using the ensemble learning based on stacking method. Research is also conducted on the classification of imbalances in the condition assessment of aero-engines at work. The results show that the data equalization method and diagnostic framework proposed in this paper can effectively diagnose multi-class imbalanced data, and the ensemble model has higher diagnostic stability and generalization ability, which is more effective for solving multi-class imbalance problems.
机译:实际上,有关许多工程问题的数据被归类为不平衡数据,这对采用数据驱动方法提出了重大挑战。本文采用综合少数多采样技术,随机过采样和随机欠采样相结合的SOU数据预处理方法进行数据均衡。在对汽车进行评估之后,使用基于堆叠方法的集成学习对葡萄酒的生产区域进行分类。还在对航空发动机工作状态评估中的不平衡进行分类的研究。结果表明,本文提出的数据均衡方法和诊断框架可以有效地诊断多类不平衡数据,集成模型具有更高的诊断稳定性和泛化能力,对于解决多类不平衡问题更有效。

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