Optimal Predictive analytics of Pima Diabetics using Deep Learning

H. Balaji, N. Iyengar, Ronnie D. Caytiles
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引用次数: 30

Abstract

An intelligent predictive model using deep learning is proposed to predict the patient risk factor and severity of diabetics using conditional data set. The model involves deep learning in the form of a deep neural network which helps to apply predictive analytics on the diabetes data set to obtain optimal results. The existing predictive models is used to predict the severity and the risk factor of the diabetics based on the data which is processed. In our case Firstly, a feature selection algorithm is run for the selection process. Secondly, the deep learning model has a deep neural network which employs a Restricted Boltzmann Machine (RBM) as a basic unit to analyse the data by assigning weights to the each branch of the neural network. This deep neural network, coded on python, will help to obtain numeric results on the severity and the risk factor of the diabetics in the data set. At the end, a comparative study is done between the implementation of this model on type 1 diabetes mellitus, Pima Indians diabetes and the Rough set theory model. The results add value to additional reports because the number of studies done on diabetes using a deep learning model is few to none. This will help to predict diabetes with much more precision as shown by the results obtained. characteristic
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使用深度学习的Pima糖尿病患者的最佳预测分析
提出了一种基于深度学习的智能预测模型,利用条件数据集预测糖尿病患者的危险因素和严重程度。该模型以深度神经网络的形式进行深度学习,有助于对糖尿病数据集进行预测分析,以获得最佳结果。利用已有的预测模型,根据处理后的数据预测糖尿病患者的严重程度和危险因素。在我们的案例中,首先,在选择过程中运行特征选择算法。其次,深度学习模型采用一个以受限玻尔兹曼机(RBM)为基本单元的深度神经网络,通过为神经网络的每个分支分配权重来分析数据。这个用python编码的深度神经网络将有助于获得数据集中糖尿病患者的严重程度和风险因素的数值结果。最后,对该模型在1型糖尿病、皮马印第安人糖尿病和粗糙集理论模型中的应用进行了比较研究。这些结果为其他报告增加了价值,因为使用深度学习模型对糖尿病进行的研究很少,甚至没有。正如所获得的结果所示,这将有助于更精确地预测糖尿病。特征
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