Diabetes Prediction Using Enhanced SVM and Deep Neural Network Learning Techniques: An Algorithmic Approach for Early Screening of Diabetes

P. Nagaraj, P. Deepalakshmi
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引用次数: 33

Abstract

Diabetes, caused by the rise in level of glucose in blood, has many latest devices to identify from blood samples. Diabetes, when unnoticed, may bring many serious diseases like heart attack, kidney disease. In this way, there is a requirement for solid research and learning model’s enhancement in the field of gestational diabetes identification and analysis. SVM is one of the powerful classification models in machine learning, and similarly, Deep Neural Network is powerful under deep learning models. In this work, we applied Enhanced Support Vector Machine and Deep Learning model Deep Neural Network for diabetes prediction and screening. The proposed method uses Deep Neural Network obtaining its input from the output of Enhanced Support Vector Machine, thus having a combined efficacy. The dataset we considered includes 768 patients’ data with eight major features and a target column with result “Positive” or “Negative”. Experiment is done with Python and the outcome of our demonstration shows that the deep Learning model gives more efficiency for diabetes prediction.
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基于增强支持向量机和深度神经网络学习技术的糖尿病预测:一种糖尿病早期筛查的算法方法
糖尿病是由血液中葡萄糖水平升高引起的,有许多最新的设备可以从血液样本中识别出来。糖尿病,如果不被注意,可能会带来许多严重的疾病,如心脏病发作,肾脏疾病。因此,在妊娠期糖尿病的识别与分析领域需要有扎实的研究和学习模式的加强。SVM是机器学习中强大的分类模型之一,同样,Deep Neural Network在深度学习模型下也是强大的。在这项工作中,我们将增强支持向量机和深度学习模型深度神经网络应用于糖尿病的预测和筛查。该方法利用深度神经网络从增强支持向量机的输出中获取输入,具有综合效果。我们考虑的数据集包括768名患者的数据,具有8个主要特征和一个结果为“Positive”或“Negative”的目标列。用Python进行了实验,结果表明深度学习模型对糖尿病的预测效率更高。
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