基于逻辑回归混合策略的非平衡课堂学习方法研究

Yucai Zhou
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引用次数: 0

摘要

在大数据时代背景下,机器学习和模式研究是世界各国学者技术讨论的主要内容。面对数据信息的不断增加,相关技术研究中出现了类不平衡的问题。其主要特点是某些类的实例数量明显少于其他类。从实际应用的角度来看,以医院的病例诊断为例,由于癌症患者数量不多,因此如何正确识别癌症患者的各类海量数据信息,既能提高工作效率,又能快速找到符合要求的病例,对现代医学诊断技术的研究具有重要意义。因此,本文在了解现代技术研发现状的基础上,根据非平衡数据集和逻辑回归模型的相关理论,深入探讨了以逻辑回归混合策略为核心的非平衡课堂学习方法。最后的实验结果表明,新的逻辑回归算法在保证高准确率的基础上,可以有效地提高其在类不平衡方面的性能。与其他先进的方法相比,逻辑回归模型具有明显的技术优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on unbalanced class learning method based on logistic regression mixed strategy
In the context of the era of big data, machine learning and pattern research are the main contents of the technical discussion of scholars around the world. Faced with the continuous increase of data information, the problem of class imbalance appears in the relevant technical research. The main feature is that the number of instances of some classes is obviously less than that of other classes. From the Angle of practical application, in cases of hospital diagnosis, for example, because only a handful of cancer patients, so how to correctly identify all kinds of mass data information in cancer patients, practice can improve work efficiency, and can quickly find conform to the requirements of the case, to modern medical diagnosis technology research is of great significance. Therefore, on the basis of understanding the status quo of modern technology research and development, this paper, according to the relevant theories of unbalanced data set and logistic regression model, deeply discusses the unbalanced class learning method with logistic regression mixed strategy as the core. The final experimental results show that the new logistic regression algorithm can effectively improve its performance in class imbalance on the basis of guaranteeing high accuracy. Compared with other advanced methods, the logistic regression model has obvious technical advantages.
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