Diabetes Data Analysis via Gaussian Membership Functions with Deep Neural Networks

Mustafa Bayram Gücen, Hasan Aykut Karaboğa
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引用次数: 2

Abstract

In this article, we analyzed Pima Indians diabetes data with deep neural network. The data were fuzzified using Gaussian membership function, and also Gaussian function used for normalization. The normalized data and fuzzified data were processed with different deep neural networks. Obtained performance results were compared and performance scores showed that, results obtained with fuzzy data are more effective than the results obtained with normalized data. This new method can be used for the prediction of different medical datasets. Furthermore, it is also possible to benefit from this approach to analyze other type of datasets.
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基于深度神经网络高斯隶属函数的糖尿病数据分析
本文采用深度神经网络对皮马印第安人糖尿病数据进行了分析。采用高斯隶属函数对数据进行模糊化,并采用高斯函数进行归一化。采用不同的深度神经网络对归一化数据和模糊化数据进行处理。对得到的性能结果进行了比较,性能得分表明,模糊数据得到的结果比规范化数据得到的结果更有效。该方法可用于不同医疗数据集的预测。此外,也可以从这种方法中受益于分析其他类型的数据集。
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