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Oversampling using Fuzzy Rough Set Theory in Imbalanced Neural based Diabetic patient Readmission Prediction: A hybrid approach

机译:利用模糊粗糙集理论在非网络基于神经基糖尿病患者入院预测中的过采样:一种混合方法

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Diabetes is a long-term illness and can lead to a variety of other complications health-wise. The growth in the counts of diabetic patients has taken a sharp hike lately which eventually resulted in an increased rate of patient admissions. Readmission rates determine the quality of the service provided by a hospital. Readmissions not only foist a massive financial burden on patients but is also responsible for an inconvenient environment for a patient. This can be avoided if high-risk patients are identified by utilizing robust machine learning approaches like Artificial Neural Network (ANN). The task becomes challenging when the Class Imbalance problem arises during the training phase of the model. The problem is very much evident in re-al-life applications with ANNs and is also prevalent in readmission prediction. In absence of any concrete study focusing on the problem in this domain, our paper proposes a Fuzzy Rough Set Theory based artificial data oversampling approach to mitigate the Class Imbalance problem while predicting high-risk diabetic patient. Two variations of the technique are tested and compared with other existing techniques. The approach is capable of reducing the effects of imbalanced classes and has resulted in enhanced performance of the ANN. The approach has also enhanced the performances of other machine learning models
机译:糖尿病是一种长期疾病,可以导致各种其他并发症健康。糖尿病患者计数的增长最近取得了急剧徒步旅行,最终导致患者入学率增加。入院率确定医院提供的服务质量。入伍不仅为患者提供了大规模的财务负担,而且还负责患者不方便的环境。如果通过利用人工神经网络(ANN)等强大的机器学习方法识别出高风险患者,则可以避免这种情况。当在模型的训练阶段出现类别的不平衡问题时,任务变得具有挑战性。在Re-Al-Life应用中,具有Anns的问题非常明显,并且在入院预测中也普遍存在。在没有任何具体研究的情况下,专注于该领域的问题,我们的论文提出了一种基于模糊的粗糙集理论的人工数据过采样方法,以减轻类别不平衡问题,同时预测高风险糖尿病患者。测试并与其他现有技术进行测试的两种变体。该方法能够减少不平衡类的影响,并导致了ANN的增强性能。该方法还增强了其他机器学习模型的性能

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