基于LASSO的CFFNN机器学习方法检测2型糖尿病患者

Sandeep Tiwari, Nitesh Gupta, Pranay Yadav
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引用次数: 11

摘要

2型糖尿病是一种长期存在的疾病,它阻碍了人体胰岛素系统的正常使用。胰岛素敏感性是一种影响2型糖尿病患者的疾病。这种类型的糖尿病似乎更常见的人在他们的早期和中年的生活。所提出的混合模型是级联前馈神经网络(CFFNN)和Lasso回归方法的结合。Lasso回归一直是深度学习中的一种回归,它与函数的决策一起参与训练。回归系数的绝对值是禁止的。利用MATlab (r2018b)对所提出的方法进行仿真。对于2型糖尿病患者的分析,使用Pima Indian和UCI数据集。与最近提出的其他方法相比,所提出的混合方法在准确性和其他性能参数方面显示出更好的结果。
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Diabetes Type2 Patient Detection Using LASSO Based CFFNN Machine Learning Approach
Type 2 diabetes is a long-lived condition that prevents the insulin human system properly using. Insulin sensitivity is a condition that affects patients with type 2 diabetes. This type of diabetes seems to be more common among people in their early and middle years of life. In the proposed hybrid model is the combination of cascaded feed forward neural network (CFFNN) and Lasso Regression method. Lasso regression has always been a kind of regression in deep learning, which participate in training with the decision of functions. The absolute magnitude of the regression coefficient is prohibited. For the simulation of proposed method utilize MATlab (r2018b). For the analysis Diabetes Type2 Patient use Pima Indian and UCI data sets. The proposed hybrid approach shows better outcomes as compare to other recently presented methods in terms of accuracy and other performance parameters.
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