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Class imbalance learning for Identity Management in Healthcare

机译:用于医疗保健身份管理的班级不平衡学习

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Classifier learning with data sets comprising of imbalanced class distributions is a challenging problem in data mining. This has a significant impact on some of the real-world applications such as medical diagnosis, anomaly detection and fault diagnosis. This empirical investigation focus on two issues, i)Efficacy of machine learning deprived due to scarcity of observations in the class of interest ii) A vulnerability assessment in terms of privacy compromise when publishing health care data. The class balancing methods are analyzed for the suitability towards a suite of classification algorithms. The results indicate a positive synergy between the preprocessing method SMOTE- TL and the learning models. An identity management algorithm based on decomposition strategy is proposed for the class imbalance problem. This can have an impact on the healthcare industry where a published health record demands privacy without compromising machine learning results.
机译:在数据挖掘中,使用包含不平衡类分布的数据集进行分类器学习是一个具有挑战性的问题。这对某些实际应用具有重大影响,例如医学诊断,异常检测和故障诊断。这项实证研究集中在两个问题上:i)由于关注类别的观察不足而导致机器学习的效率降低; ii)发布卫生保健数据时在隐私权方面进行了脆弱性评估。分析类平衡方法是否适用于一套分类算法。结果表明,预处理方法SMOTE-TL与学习模型之间具有积极的协同作用。针对类不平衡问题,提出了一种基于分解策略的身份管理算法。这可能会对医疗保健行业产生影响,在医疗保健行业中,已发布的健康记录要求保密,而又不影响机器学习结果。

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