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Suitable MLP Network Activation Functions for Breast Cancer and Thyroid Disease Detection

机译:适用于乳腺癌和甲状腺疾病检测的MLP网络激活功能

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This paper compared various MLP activation functions for classification problems. The most well-known (Artificial Neural Network) ANN architecture is the Multilayer Perceptron (MLP) network which is widely used for solving problems related to data classifications. Selection of the activation functions in the MLP network plays an essential role on the network performance. A lot of studies have been conducted by reseachers to investigate special activation function to solve different kind of problems. Therefore, this paper intends to investigate the activation functions in MLP networks in terms of the accuracy performances. The activation functions under investigation are sigmoid, hyperbolic tangent, neuronal, logarithmic, sinusoidal and exponential. Medical diagnosis data from two case studies, thyroid disease classification and breast cancer classification, have been used to test the performance of the MLP network. The MLP networks are trained using Back Propagation learning algorithm. The performance of the MLP networks are calculated based on the percentage of correct classificition. The results show that the hyperbolic tangent function in MLP network had the capability to produce the highest accuracy for classifying breast cancer data. Meanwhile, for thyroid disease classification, neuronal function is the most suitable function that performed the highest accuracy in MLP network.
机译:本文比较了针对分类问题的各种MLP激活函数。最著名的(人工神经网络)ANN体系结构是多层感知器(MLP)网络,该网络广泛用于解决与数据分类有关的问题。 MLP网络中激活功能的选择对网络性能起着至关重要的作用。研究人员已经进行了许多研究,以研究特殊的激活功能来解决各种问题。因此,本文打算从准确性的角度研究MLP网络中的激活函数。所研究的激活函数为S型,双曲正切,神经元,对数,正弦和指数函数。来自两个案例研究(甲状腺疾病分类和乳腺癌分类)的医学诊断数据已用于测试MLP网络的性能。使用反向传播学习算法训练MLP网络。 MLP网络的性能是根据正确分类的百分比计算的。结果表明,MLP网络中的双曲正切函数具有产生对乳腺癌数据进行分类的最高准确度的能力。同时,对于甲状腺疾病的分类,神经元功能是在MLP网络中执行最高准确度的最合适的功能。

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